Hubbry Logo
Consumer price indexConsumer price indexMain
Open search
Consumer price index
Community hub
Consumer price index
logo
8 pages, 0 posts
0 subscribers
Be the first to start a discussion here.
Be the first to start a discussion here.
Consumer price index
Consumer price index
from Wikipedia

Consumer price index by country 2024 relative to 2010 in %[1]
A graph of the US CPI from 1913 (in blue), and its percentage annual change (in red)
Annual percent change from a year earlier)
  CPI
  Core CPI
CPI 1914-2022
Annual change in CPI 1914–2022
  M2 money supply increases Year/Year

A consumer price index (CPI) is a statistical estimate of the level of prices of goods and services bought for consumption purposes by households. It is calculated as the weighted average price of a market basket of consumer goods and services. Changes in CPI track changes in prices over time.[2] The items in the basket are updated periodically to reflect changes in consumer spending habits. The prices of the goods and services in the basket are collected (often monthly) from a sample of retail and service establishments. The prices are then adjusted for changes in quality or features.[citation needed] Changes in the CPI can be used to track inflation over time and to compare inflation rates between different countries. While the CPI is not a perfect measure of inflation or the cost of living, it is a useful tool for tracking these economic indicators.[3] It is one of several price indices calculated by many national statistical agencies.

Overview

[edit]

A CPI is a statistical estimate constructed using the prices of a sample of representative items whose prices are collected periodically. Sub-indices and sub-sub-indices can be computed for different categories and sub-categories of goods and services, which are combined to produce the overall index with weights reflecting their shares in the total of the consumer expenditures covered by the index. The annual percentage change in the CPI is used as a measure of inflation. A CPI can be used to index (i.e., adjust for the effect of inflation) the real value of wages, salaries, and pensions; to regulate prices; and to deflate monetary magnitudes to show changes in real values. In most countries, the CPI is one of the most closely watched national economic statistics.

Inflation compared to federal funds rate

The index is usually computed monthly, or quarterly in some countries, as a weighted average of sub-indices for different components of consumer expenditure, such as food, housing, shoes, and clothing, each of which is, in turn, a weighted average of sub-sub-indices. At the most detailed level, the elementary aggregate level (for example, men's shirts sold in department stores in San Francisco), detailed weighting information is unavailable, so indices are computed using an unweighted arithmetic or geometric mean of the prices of the sampled products. (However, the growing use of barcode scanner data is gradually making weighting information available even at the most detailed level.) These indices compare prices each month with prices in the price-reference month. The weights used to combine them into the higher-level aggregates and then into the overall index relate to the estimated expenditures during the preceding whole year of the consumers covered by the index on the products within its scope in the area covered. Thus, the index is a fixed-weight index but rarely a true Laspeyres index since the weight-reference period of a year and the price-reference period, usually a more recent single month, do not coincide.

Ideally, all price revalidations are accepted, and the weights would relate to the composition of expenditure during the time between the price-reference month and the current month. There is a large technical economics literature on index formulas that would approximate this and that can be shown to approximate what economic theorists call a true cost-of-living index. Such an index would show how consumer expenditure would have to move to compensate for price changes so as to allow consumers to maintain a constant standard of living. Approximations can only be computed retrospectively, whereas the index has to appear monthly and, preferably, quite soon. Nevertheless, in some countries, notably the United States and Sweden, the philosophy of the index is that it is inspired by and approximates the notion of a true cost of living (constant utility) index, whereas in most of Europe it is regarded more pragmatically.

The coverage of the index may be limited. Consumers' expenditure abroad is usually excluded; visitors' expenditure within the country may be excluded in principle if not in practice; the rural population may or may not be included; certain groups, such as the very rich or the very poor, may be excluded. Savings and investment are always excluded, though the prices paid for financial services provided by financial intermediaries may be included along with insurance.

The index reference period, usually called the base year, often differs both from the weight-reference period and the price-reference period. This is just a matter of rescaling the whole time series to make the value for the index reference period equal to 100. Annually revised weights are a desirable but expensive feature of an index; the older the weights, the greater the divergence between the current expenditure pattern and that of the weight reference period.

It is calculated and reported on a per region or country basis on a monthly and annual basis. International organizations like the Organisation for Economic Co-operation and Development (OECD) report statistical figures like the consumer price index for many of its member countries.[4] In the US the CPI is usually reported by the Bureau of Labor Statistics.[5][6][7]

An English economist by the name of Joseph Lowe first proposed the theory of price basket index in 1822. His fixed basket approach was relatively simple as Lowe computed the price of a list of goods in period 0 and compared the price of that same basket of goods in period 1. Since his proposed theories however were elementary, later economists built on his ideas to form our modern definition.[8]

Calculation

[edit]
How is the Consumer Prices Index (CPI) calculated?

For a single item

[edit]

For a single item, the CPI can be calculated as:

or

where 1 is usually the comparison year and CPI1 is usually an index of 100.

Alternatively, the CPI can be performed as:

The "updated cost" (i.e. the price of an item at a given year, e.g.: the price of bread today) is divided by that of the initial year (the price of bread in 1970), then multiplied by one hundred.[9][better source needed]

For multiple Items

[edit]

Many but not all price indices are weighted averages using weights that sum to 1 or 100.

Example: The prices of 85,000 items from 22,000 stores, and 35,000 rental units are added together and averaged. They are weighted this way: housing 41.4%; food and beverages 17.4%; transport 17.0%; medical care 6.9%; apparel 6.0%; entertainment 4.4%; other 6.9%. Taxes (43%) are not included in CPI computation.[10][full citation needed]

where the terms do not necessarily sum to 1 or 100.

Weighting

[edit]

Weights and sub-indices

[edit]

By convention, weights are fractions or ratios summing to one, as percentages summing to 100 or as per mille numbers summing to 1000.[citation needed]

On the European Union's Harmonized Index of Consumer Prices (HICP), for example, each country computes some 80 prescribed sub-indices, their weighted average constituting the national HICP. The weights for these sub-indices will consist of the sum of the weights of a number of component lower level indices. The classification is according to use, developed in a national accounting context. This is not necessarily the kind of classification that is most appropriate for a consumer price index. Grouping together of substitutes or of products whose prices tend to move in parallel might be more suitable.

For some of these lower-level indices detailed reweighting to make them be available,[clarification needed] allowing computations where the individual price observations can all be weighted.[clarification needed] This may be the case, for example, where all selling is in the hands of a single national organization which makes its data available to the index compilers. For most lower level indices, however, the weight will consist of the sum of the weights of a number of elementary aggregate indices, each weight corresponding to its fraction of the total annual expenditure covered by the index. An 'elementary aggregate' is a lowest-level component of expenditure: this has a weight, but the weights of each of its sub-components are usually lacking. Thus, for example: Weighted averages of elementary aggregate indices (e.g. for men's shirts, raincoats, women's dresses, etc.) make up low-level indices (e.g. outer garments).

Weight averages of these, in turn, provide sub-indices at a higher, more aggregated level (e.g. clothing) and weighted averages of the latter provide yet more aggregated sub-indices (e.g. Clothing and Footwear).

Some of the elementary aggregate indices and some of the sub-indices can be defined simply in terms of the types of goods and/or services they cover. In the case of such products as newspapers in some countries and postal services, which have nationally uniform prices.[clarification needed][words missing?] But where price movements do differ or might differ between regions or between outlet types, separate regional and/or outlet-type elementary aggregates are ideally required for each detailed category of goods and services, each with its own weight. An example might be an elementary aggregate for sliced bread sold in supermarkets in the Northern region.

Most elementary aggregate indices are necessarily 'unweighted' averages for the sample of products within the sampled outlets. However, in cases where it is possible to select the sample of outlets from which prices are collected so as to reflect the shares of sales to consumers of the different outlet types covered, self-weighted elementary aggregate indices may be computed. Similarly, if the market shares of the different types of products represented by product types are known, even only approximately, the number of observed products to be priced for each of them can be made proportional to those shares.

Estimating weights

[edit]

The outlet and regional dimensions noted above mean that the estimation of weights involves a lot more than just the breakdown of expenditure by types of goods and services, and the number of separately weighted indices composing the overall index depends upon two factors:

  1. The degree of detail to which available data permit breakdown of total consumption expenditure in the weight reference-period by type of expenditure, region and outlet type.
  2. Whether there is reason to believe that price movements vary between these most detailed categories.

How the weights are calculated, and in how much detail, depends upon the availability of information and upon the scope of the index. In the UK the retail price index (RPI)[11] does not relate to the whole of consumption, for the reference population is all private households with the exception of pensioner households that derive at least three-quarters of their total income from state pensions and benefits, and "high income households" whose total household income lies within the top four per cent of all households. The result is that it is difficult to use data sources relating to total consumption by all population groups.

For products whose price movements can differ between regions and between different types of outlet:

  • The ideal, rarely realizable in practice, would consist of estimates of expenditure for each detailed consumption category, for each type of outlet, for each region.
  • At the opposite extreme, with no regional data on expenditure totals but only on population (e.g. 24% in the Northern region) and only national estimates for the shares of different outlet types for broad categories of consumption (e.g. 70% of food sold in supermarkets) the weight for sliced bread sold in supermarkets in the Northern region has to be estimated as the share of sliced bread in total consumption × 0.24 × 0.7.

The situation in most countries comes somewhere between these two extremes. The point is to make the best use of whatever data are available.

Due to differences in weightings in the consumer basket, different price indices may be calculated for groups with various demographic characteristics. For example, consumer price indices calculated according to the weightings in the consumer basket of income groups may show significantly different trends.[12]

The nature of the data used for weighting

[edit]

No firm rules can be suggested on this issue for the simple reason that the available statistical sources differ between countries. However, all countries conduct periodical household-expenditure surveys and all produce breakdowns of consumption expenditure in their national accounts. The expenditure classifications used there may however be different. In particular:

  • Household-expenditure surveys do not cover the expenditures of foreign visitors, though these may be within the scope of a consumer price index.
  • National accounts include imputed rents for owner-occupied dwellings which may not be within the scope of a consumer price index.

Even with the necessary adjustments, the national-account estimates and household-expenditure surveys usually diverge.

The statistical sources required for regional and outlet-type breakdowns are usually weak. Only a large-sample Household Expenditure survey can provide a regional breakdown. Regional population data are sometimes used for this purpose, but need adjustment to allow for regional differences in living standards and consumption patterns. Statistics of retail sales and market research reports can provide information for estimating outlet-type breakdowns, but the classifications they use rarely correspond to COICOP categories.

The increasingly widespread use of bar-code scanners in shops has meant that detailed cash register printed receipts are provided by shops for an increasing share of retail purchases. This development makes possible improved Household Expenditure surveys, as Statistics Iceland has demonstrated. Survey respondents keeping a diary of their purchases need to record only the total of purchases when itemized receipts were given to them and keep these receipts in a special pocket in the diary. These receipts provide not only a detailed breakdown of purchases but also the name of the outlet. Thus response burden is markedly reduced, accuracy is increased, product description is more specific and point of purchase data are obtained, facilitating the estimation of outlet-type weights.

There are only two general principles for the estimation of weights: use all the available information and accept that rough estimates are better than no estimates.

Reweighting

[edit]

Ideally, in computing an index, the weights would represent current annual expenditure patterns. In practice, they necessarily reflect past using the most recent data available or, if they are not of high quality, some average of the data for more than one previous year. Some countries have used a three-year average in recognition of the fact that household survey estimates are of poor quality. In some cases, some of the data sources used may not be available annually, in which case some of the weights for lower-level aggregates within higher-level aggregates are based on older data than the higher level weights.

Infrequent reweighting saves costs for the national statistical office but delays the introduction into the index of new types of expenditure. For example, subscriptions for Internet service entered index compilation with a considerable time lag in some countries, and account could be taken of digital camera prices between re-weightings only by including some digital cameras in the same elementary aggregate as film cameras.

Owner-occupiers and the price index

[edit]

The way in which owner-occupied dwellings should be dealt with in a consumer price index has been, and remains, a subject of heated controversy in many countries. Various approaches have been considered, each with their advantages and disadvantages.[citation needed]

Economists' approach

[edit]

Leaving aside the quality of public services, the environment, crime, and so forth, and regarding the standard of living as a function of the level and composition of individuals' consumption, this standard depends upon the amount and range of goods and services they consume. These include the service provided by rented accommodation, which can readily be priced, and the similar services yielded by a flat or house owned by the consumer who occupies it. Its cost to a consumer is, according to the economic way of thinking, an "opportunity cost," namely what he or she sacrifices by living in it. This cost, according to many economists, should form a component of a consumer price index.

Opportunity cost can be looked at in two ways, since there are two alternatives to continuing to live in an owner-occupied dwelling. One, supposing that it is one year's cost that is to be considered, is to sell it, earn interest on the owner's capital thus released, and buy it back a year later, making an allowance for its physical depreciation. This can be called the "alternative cost" approach. The other, the "rental equivalent" approach, is to let it to someone else for the year, in which case the cost is the rent that could be obtained for it.

There are practical problems in implementing either of these economists' approaches. Thus, with the alternative cost approach, if house prices are rising fast, the cost can be negative and then become sharply positive once house prices start to fall, so such an index would be very volatile. On the other hand, with the rental equivalent approach, there may be difficulty estimating the movement of rental values for types of property that are not actually rented. If one or other of these measures of the consumption of the services of owner-occupied dwellings is included in consumption, then it must be included in income too, for income equals consumption plus saving. This means that if the movement of incomes is to be compared with the movement of the consumer price index, incomes must be expressed as money income plus this imaginary consumption value. That is logical, but it may not be what users of the index want.

Although the argument has been expressed in connection with owner-occupied dwellings, the logic applies equally to all durable consumer goods and services. Furniture, carpets, and domestic appliances are not used up soon after purchase in the way that food is. Like dwellings, they yield a consumption service that can continue for years. Furthermore, since strict logic is to be adhered to, there are durable services as well that ought to be treated in the same way; the services consumers derive from appendectomies or crowned teeth continue for a long time. Since estimating values for these components of consumption has not been tackled, economic theorists are torn between their desire for intellectual consistency and their recognition that including the opportunity cost of the use of durables is impracticable.[citation needed]

Spending

[edit]

Another approach is to concentrate on spending. Everyone agrees that repairs and maintenance expenditures for owner-occupied dwellings should be covered by a consumer price index, but the spending approach would include mortgage interest too. This turns out to be quite complicated, both conceptually and in practice.

To explain what is involved, consider a consumer price index computed with reference to 2009 for just one sole consumer who bought her house in 2006, financing half of this sum by raising a mortgage. The problem is to compare how much interest such a consumer would now be paying with the interest that was paid in 2009. Since the aim is to compare like with like, that requires an estimate of how much interest would be paid now in the year 2010 on a similar house bought and 50% mortgage-financed three years ago, in 2007. It does not require an estimate of how much that identical person is paying now on the actual house she bought in 2006, even though that is what personally concerns her now.

A consumer price index compares how much it would cost now to do exactly what consumers did in the reference period with what it cost then. Application of the principle thus requires that the index for our one house owner reflect the movement of the prices of houses like hers from 2006 to 2007 and the change in interest rates. If she took out a fixed-interest mortgage, it is the change in interest rates from 2006 to 2007 that counts; if she took out a variable-interest mortgage, it is the change from 2009 to 2010 that counts. Thus, her current index with 1999 as a reference period will stand at more than 100 if house prices or, in the case of a fixed-interest mortgage, interest rates rose between 2006 and 2007.

The application of this principle in the owner-occupied dwellings component of a consumer price index is known as the "debt profile" method. It means that the current movement of the index will reflect past changes in dwelling prices and interest rates. Some people regard this as odd. Quite a few countries use the debt profile method, but in doing so, most of them behave inconsistently. Consistency would require that the index also cover the interest on consumer credit instead of the whole price paid for the products bought on credit if it covers mortgage interest payments. Products bought on credit would then be treated in the same way as owner-occupied dwellings.

Variants of the debt profile method are employed or have been proposed. One example is to include down payments as well as interest. Another is to correct nominal mortgage rates for changes in dwelling prices or for changes in the rest of the consumer price index to obtain a "real" rate of interest. Also, other methods may be used alongside the debt profile method. Thus, several countries include a purely notional cost of depreciation as an additional index component, applying an arbitrarily estimated, or rather guessed, depreciation rate to the value of the stock of owner-occupied dwellings. Finally, one country includes both mortgage interest and purchase prices in its index.

Transaction prices

[edit]

The third approach simply treats the acquisition of owner-occupied dwellings in the same way as acquisitions of other durable products are treated. This means:

  • Taking account of the transaction prices agreed,
  • ignoring whether payments are delayed or are partly financed by borrowing;
  • leaving out second-hand transactions. Second-hand purchases correspond to sales by other consumers. Thus, only new dwellings would be included.

Furthermore, expenditure on enlarging or reconstructing an owner-occupied dwelling would be covered, in addition to regular maintenance and repair. Two arguments of almost theological character are advanced in connection with this transactional approach.

One argument is that purchases of new dwellings are treated as "investment" in the system of national accounts and should not enter a consumption price index. It is said that this is more than just a matter of terminological uniformity. For example, it may be thought to help understand and facilitate economic analysis if what is included under the heading "consumption" is the same in the consumer price index and in the national income and expenditure accounts. Since these accounts include the equivalent rental value of owner-occupied dwellings, the equivalent rental approach would have to be applied to the consumer price index too. But the national accounts do not apply it to other durables, so the argument demands consistency in one respect but accepts its rejection in another.

The other argument is that the prices of new dwellings should exclude that part reflecting the value of the land, since this is an irreproducible and permanent asset that cannot be said to be consumed. This would presumably mean deducting site value from the price of a dwelling, with site value being defined as the price the site would fetch at auction if the dwelling were not on it. How this is to be understood in the case of multiple dwellings remains unclear. [citation needed]

Confusion

[edit]

The merits of the different approaches are multidimensional, including feasibility, views on the way the index should and would move in particular circumstances, and theoretical properties of the index.

Statisticians in a country lacking a good dwelling price index (which is required for all except the rental equivalent method) will go along with a proposal to use such an index only if they can obtain the necessary additional resources that will enable them to compile one. Even obtaining mortgage interest rate data can be a major task in a country with a multitude of mortgage lenders and many types of mortgages. Dislike of the effect on the behavior of the consumer price index arising from the adoption of some methods can be a powerful, if sometimes unprincipled, argument.

Dwelling prices are volatile, so there would be an index incorporating the current value of a dwelling price sub-index, which, in some countries, would have a large weight under the third approach. Furthermore, the weight for owner-occupied dwellings could be altered considerably when reweighting is undertaken. (It could even become negative under the alternative cost approach if weights were estimated for a year during which house prices had been rising steeply.)

Then, there is the point that a rise in interest rates designed to halt inflation could paradoxically make inflation appear higher if current interest rates showed up in the index. Economists' principles are not acceptable to all, nor is their insistence on consistency between the treatment of owner-occupied dwellings and other durables.

In the United States

[edit]
PPI is a leading indicator, CPI and PCE lag[13]
  PPI
  Core PPI
  CPI
  Core CPI
  PCE
  Core PCE

In the United States several different consumer price indices are routinely computed by the Bureau of Labor Statistics (BLS). These include the CPI-U (for all urban consumers), CPI-W (for Urban Wage Earners and Clerical Workers), CPI-E (for the elderly), and C-CPI-U (chained CPI for all urban consumers). These are all built over two stages. First, the BLS collects data to estimate 8,018 separate item–area indices reflecting the prices of 211 categories of consumption items in 38 geographical areas. In the second stage, weighted averages are computed of these 8,018 item–area indices. The different indices differ only in the weights applied to the different 8,018 item–area indices. The weights for CPI-U and CPI-W are held constant for 24 months, changing in January of even-numbered years. The weights for C-CPI-U are updated each month to reflecting changes in consumption patterns in the last month. Thus, if people on average eat more chicken and less beef or more apples and fewer oranges than the previous month, that change would be reflected in next month's C-CPI-U. However, it would not be reflected in CPI-U and CPI-W until January of the next even-numbered year.[14]

This allows the BLS to compute consumer price indices for each of the designated 38 geographical areas and for aggregates like the Midwest.[15]

In January of each year, Social Security recipients receive a cost-of-living adjustment (COLA) "to ensure that the purchasing power of Social Security and Supplemental Security Income (SSI) benefits is not eroded by inflation. It is based on the percentage increase in the Consumer Price Index for Urban Wage Earners and Clerical Workers (CPI-W)".[16] The use of CPI-W conflicts with this purpose, because the elderly consume substantially more health care goods and services than younger people.[17] In recent years, inflation in health care has substantially exceeded inflation in the rest of the economy. Since the weight on health care in CPI-W is much less than the consumption patterns of the elderly, this COLA does not adequately compensate them for the real increases in the costs of the items they buy.

The BLS does track a consumer price index for the elderly (CPI-E). It is not used, in part because the social security trust fund is forecasted to run out of money in roughly 40 years, and using the CPI-E instead of CPI-W would shorten that by roughly five years.[18]

The most recent December 2021 CPI reading hit 7%, the highest level in over 40 years. In response Jerome Powell, chair of the Federal Reserve has begun Quantitative tightening with rate hikes expected to begin in March 2022.[19][20][21]

History

[edit]

The CPI for various years are listed below with 1982 as the base year:[22][23] A CPI of 150 means that there was 50% increase in prices, or 50% inflation, since 1982.

Year 1920 1930 1940 1950 1960 1970 1980 1982 1990 2000 2010 2020 2023 2024
CPI 20.0 16.7 14.0 24.1 29.6 38.8 82.4 100.0 130.7 172.2 219.2 258.0 299.2 351.6

Chained CPI

[edit]

Former White House Chief of Staff Erskine Bowles and former U.S. Senator Alan K. Simpson suggested a transition to using a "chained CPI" in 2010, when they headed the White House's deficit-reduction commission.[24] They stated that it was a more accurate measure of inflation than the current system and switching from the current system could save the government more than $290 billion over the decade following their report.[24] "The chained CPI is usually 0.25 to 0.30 percentage points lower each year, on average, than the standard CPI measurements".[24]

However, the National Active and Retired Federal Employees Associations said that the chained CPI does not account for seniors citizens' health care costs.[24] Robert Reich, former United States Secretary of Labor under President Clinton, noted that typical seniors spend between 20 and 40 percent of their income on health care, far more than most Americans. "Besides, Social Security isn't in serious trouble. The Social Security trust fund is flush for at least two decades. If we want to ensure it's there beyond that, there's an easy fix – just lift the ceiling on income subject to Social Security taxes, which is now $113,700."[17]

Replacing the current cost-of-living adjustment calculation with the chained CPI was considered, but not adopted, as part of a deficit-reduction proposal to avert the sequestration cuts, or fiscal cliff, in January 2013,[24] but President Obama included it in his April 2013 budget proposal.[25]

Personal consumption expenditures price index

[edit]
  CPI
  PCE
CPI vs PCE

Because of some shortcomings of the CPI, notably that it uses static expenditure weighting and it does not account for the substitution effect, the PCEPI is an alternative price index used by the Federal Reserve, among others, to measure inflation.[26] From January 1959 through July 2018, inflation measured by the PCEPI has averaged 3.3%, while it has averaged 3.8% using CPI.[27]

See also

[edit]

References

[edit]

Further reading

[edit]
[edit]
Revisions and contributorsEdit on WikipediaRead on Wikipedia
from Grokipedia
The Consumer Price Index (CPI) is a statistical measure estimating the average change over time in prices paid by urban consumers for a fixed of representative of typical expenditures. In the United States, the CPI is compiled monthly by the (BLS) using data from approximately 80,000 retail and service establishments and 23,000 rental units, covering categories such as , , apparel, transportation, medical care, , , and communication. The index serves primarily as a gauge of , informing decisions by central banks like the , which targets a 2% annual CPI rate to balance and stability. It also adjusts wages, pensions, and tax brackets for cost-of-living changes, with Social Security benefits and certain federal payments indexed to the CPI for Urban Wage Earners and Clerical Workers (CPI-W). To compute the CPI, the BLS selects a base year and calculates the cost of the in that period, then compares it to current-period costs, applying a such as CPI = (cost of basket in current period / cost of basket in base period) × 100, with weights derived from the Consumer Expenditure Survey reflecting expenditure shares. Since 1999, most lower-level indexes use a to approximate consumer substitution toward cheaper alternatives when relative prices change, aiming to reduce upward from fixed-basket assumptions inherent in traditional Laspeyres indexes. However, the CPI has faced scrutiny for potential inaccuracies: official reviews, including the 1996 Boskin Commission report, argued it overstated by 1.1 percentage points annually due to substitution, quality improvements, and new goods not fully captured, leading to methodological tweaks that lowered reported rates. Conversely, critics contend these adjustments, such as hedonic quality corrections for items like , along with exclusion of non-market factors and underweighting of costs, systematically understate true cost-of-living increases, particularly for lower-income households facing volatile essentials. Empirical analyses, including BLS estimates showing standard errors around 0.1-0.2% monthly for the all-items index, underscore its reliability as a broad trend indicator but highlight limitations in reflecting individualized consumption shifts or regional variations. Despite such debates, the CPI remains the most widely referenced metric globally, with analogous indexes adapted by national statistical agencies to track erosion.

Conceptual Foundations

Definition and Measurement

The Consumer Price Index (CPI) quantifies the average percentage change over time in the prices paid by a representative sample of urban consumers for a fixed basket of typically purchased for consumption. This index serves as a primary indicator of inflation from the consumer's perspective, reflecting shifts in purchasing power rather than producer costs. In the United States, the CPI targets urban consumers, covering approximately 93% of the population, with separate variants like CPI-U for all urban consumers and CPI-W for wage earners and clerical workers. Measurement begins with defining a market basket derived from periodic Consumer Expenditure Surveys, which capture household spending patterns to establish item categories and weights. The basket encompasses around 80,000 items across eight major groups, including food, , apparel, transportation, medical care, , , and other goods and services, with weights updated roughly every two years to reflect evolving consumption habits. A base period, often a recent year like 1982-1984 in the U.S. where the index equals 100, anchors the calculation, allowing relative price changes to be tracked thereafter. Price involves monthly sampling from approximately 23,000 retail outlets and service providers, plus 31,000 units, across 75 urban areas, using stratified probability sampling to ensure representativeness. Prices are gathered for specific item to maintain consistency, with field economists verifying outlets and scanner data supplementing manual collections for high-volume items like groceries. Imputations handle missing prices via methods such as cell-relative or carry-forward techniques to avoid from temporary data gaps. The index is computed using a Laspeyres-type formula at higher aggregation levels, expressed as $ \text{CPI} = \frac{\sum (p_t \cdot q_0 \cdot w_i)}{\sum (p_0 \cdot q_0 \cdot w_i)} \times 100 $, where $ p_t $ and $ p_0 $ are current and base period prices, $ q_0 $ is base quantity, and $ w_i $ are expenditure weights. Lower-level indexes employ geometric means since 1999 to partially account for substitution bias within categories, calculating $ \left( \prod (p_t / p_0)^{e_i} \right)^{1 / \sum e_i} $, where $ e_i $ are expenditure proportions. National indexes are aggregated from area samples using population weights, with chaining applied for some components to mitigate formula effect biases. Internationally, similar methodologies prevail under guidelines, though base baskets and update frequencies vary by country.

Purposes and Applications

The Consumer Price Index (CPI) serves primarily as a measure of , tracking the change over time in prices paid by urban consumers for a fixed of goods and services, thereby indicating the effectiveness of monetary and fiscal policies in maintaining price stability. Central banks, such as the , rely on CPI data to calibrate interest rates and other tools aimed at controlling inflationary pressures, with the index providing a benchmark for assessing deviations from target rates around 2% annually. Economists use it to deflate nominal economic series into real terms, enabling comparisons of across periods free from price distortions. In , the CPI underpins cost-of-living adjustments () for federal benefits, including Social Security payments, which are indexed annually to the CPI for Urban Wage Earners and Clerical Workers (CPI-W) to preserve beneficiaries' amid rising prices; for instance, the 2023 increase of 8.7% reflected the prior year's CPI rise. It also adjusts income eligibility thresholds for government assistance programs, federal tax brackets to mitigate bracket creep, and parameters in regulations like escalations in certain jurisdictions. At the state and local levels, numerous programs—over 100 federal uses alone, spanning entitlements and funding—incorporate CPI for inflation-linked disbursements. Private sector applications include escalation clauses in contracts, where CPI adjustments maintain the real value of payments; common in collective bargaining agreements, rental leases, royalties, alimony, and child support, these provisions tie obligations to CPI changes to hedge against erosion of purchasing power. Businesses employ CPI in pricing strategies, pension fund valuations, and financial modeling to forecast real returns, while unions negotiate wage indexation to CPI for automatic adjustments, as seen in empirical studies of labor contracts where such clauses correlate with industry-specific price volatilities. Overall, these uses extend CPI's role beyond measurement to practical mechanisms for economic indexing, though reliance on its fixed-basket methodology assumes limited substitution effects among consumers.

Historical Evolution

Origins in the Early 20th Century

![US CPI from 1914 to 2022][float-right] The Bureau of Labor Statistics (BLS) initiated the precursor to the modern Consumer Price Index (CPI) during World War I to address the need for cost-of-living adjustments in wage negotiations for shipbuilding and munitions workers. In 1919, the BLS published the first official CPI data for 32 major industrial and shipbuilding centers, with estimates retroactive to 1913. This index, initially called the Cost-of-Living Index, tracked price changes for essential goods consumed by urban wage-earners and clerical workers, focusing on categories such as food, clothing, housing, and fuel. The development responded to wartime inflation, which necessitated empirical measures to maintain real wages amid rising prices. Preceding this, the BLS conducted targeted price studies, beginning with food price indexes in for select cities, expanding to include by 1914. However, these were fragmented and not fully integrated until the 1919 effort, which drew on family expenditure surveys started in 1917 to define the consumption basket. The methodology involved fixed-weight aggregation of price relatives, using base-period quantities to reflect typical working-class spending patterns, though limited to white families in urban areas due to data availability. Regular monthly CPI publications commenced in February 1921, based on a comprehensive 1918-1919 survey of approximately 92 cities covering white wage-earner households. This established the index's role in and , providing a standardized tool for quantifying despite initial limitations in scope and demographic representation. Early criticisms highlighted potential biases from incomplete coverage and exclusion of rural or non-white populations, but the index's causal linkage to observed price data grounded its utility in first-order empirical assessment of changes.

Post-World War II Developments

Following , the Consumer Price Index (CPI) in the United States gained prominence for indexing wages, pensions, and social benefits to cost-of-living changes, amid postwar peaking at around 19% annually in 1947 due to pent-up demand and supply disruptions. The U.S. (BLS) updated CPI weights in 1950 based on a 1947–1949 consumer expenditure survey combined with the 1950 , incorporating emerging items such as frozen foods and televisions while adjusting the rent index to mitigate "new unit bias" from higher-priced postwar housing. The 1953 revision, the second comprehensive update, shifted weights to data from a 1950 expenditure survey, expanded coverage to medium- and small-sized cities beyond the prior focus on large urban areas, and introduced for meals and homeownership costs including and taxes. These changes reflected evolving consumer patterns in a growing suburban and improved methodologies for greater accuracy in tracking retail transactions. In 1964, the third revision utilized weights from a 1960–1961 metropolitan-area expenditure survey, incorporated single-person households previously excluded, and extended price collection to suburban outlets to better capture commuting and shopping shifts. This update addressed criticisms of urban bias in earlier indexes and aligned the CPI more closely with the diversifying demographics of urban wage earners. The CPI's sensitivity to economic shocks was demonstrated during the 1970s high-inflation period, particularly from oil price shocks in 1973–1975 and 1979–1980, with annual averages rising from 38.8 in 1970 to 53.8 in 1975 and 72.6 in 1979 (1982-84=100 base), resulting in inflation-adjusted equivalents of salaries varying significantly depending on the exact year due to differing cumulative price levels. The 1978 revision marked a major expansion by introducing the CPI for All Urban Consumers (CPI-U), covering about 80% of the population including professionals and self-employed, while redesignating the prior index as CPI for Urban Wage Earners and Clerical Workers (CPI-W). It drew on 1972–1973 expenditure data and the 1970 Census, increased sampled areas to 85, adopted bimonthly pricing schedules, and implemented probability sampling for outlets and items to enhance representativeness and reduce costs. These methodological advances responded to broader economic uses of the CPI, such as in federal benefit adjustments, though they introduced discontinuities when compared to pre-1978 series.

1990s Reforms and Boskin Commission Impact

In 1995, the U.S. Congress established an advisory commission, chaired by Michael Boskin, to evaluate potential biases in the Consumer Price Index (CPI) as measured by the (BLS). The commission's final report, released on December 4, 1996, concluded that the CPI overstated annual inflation by approximately 1.1 percentage points in 1996, with an estimated overstatement of 1.3 percentage points in prior years. This bias was attributed primarily to three factors: substitution bias (0.4 percentage points), where consumers shift toward cheaper alternatives not fully captured by fixed-basket arithmetic means; quality improvement and new goods bias (0.6 percentage points), due to unadjusted enhancements in product quality and introduction of innovative items; and outlet bias (0.1 percentage point), from consumers increasingly shopping at discount outlets. The report emphasized that these upward biases cumulatively distorted cost-of-living adjustments, affecting federal budgeting, Social Security cost-of-living allowances (COLAs), and indexing. The Boskin Commission's findings prompted the BLS to implement targeted methodological reforms in the late 1990s to mitigate identified biases, though not all recommendations were adopted wholesale. In January 1999, the BLS introduced estimators for roughly 60-70% of lower-level CPI item categories, replacing arithmetic means to better reflect consumer substitution within basic indexes like "men's shirts" or "fresh vegetables," reducing reported by an estimated 0.1 to 0.2 percentage points annually. This change directly addressed the commission's substitution bias critique by allowing implicit price elasticities in aggregation formulas. Additionally, the BLS expanded hedonic quality adjustments—regression-based models isolating price changes from quality improvements—for categories such as computers, televisions, and apparel, incorporating more frequent updates to reflect rapid technological advances, which further lowered CPI growth by accounting for in goods. These reforms had significant fiscal ramifications, as lower CPI inflation estimates enabled Congress to project reduced expenditures on indexed programs. For instance, the (CBO) incorporated a 0.6 downward adjustment to CPI projections in its 1997-2000 outlooks, partly influenced by Boskin estimates, yielding potential federal savings of $100-140 billion over a decade through moderated COLAs and gains from "bracket creep" reversal. Critics, including some economists, contended that the adjustments risked understating true cost-of-living changes, particularly for lower-income households less able to substitute goods, but BLS evaluations indicated the changes aligned empirical data with commission-identified overstatements without introducing new downward biases. The BLS later developed the Chained CPI-U research series in 2002 to incorporate upper-level substitution across broader categories, building on innovations, though it remained experimental. Overall, the Boskin-era reforms shifted CPI methodology toward greater responsiveness to consumer behavior and product evolution, reducing perceived upward bias from 1.1 s to an estimated 0.2-0.3 s by the early 2000s per BLS assessments.

Calculation Framework

Basket Selection and Weighting Procedures

The selection of goods and services for the Consumer Price Index (CPI) basket relies on expenditure data from the Consumer Expenditure (CE) Survey, administered by the U.S. Bureau of Labor Statistics (BLS), which tracks spending by a representative sample of urban households through quarterly interviews and weekly diaries. This survey captures out-of-pocket purchases for personal consumption, excluding income taxes and certain non-market transactions, to establish categories and item strata that reflect typical urban consumer behavior, covering roughly 93% of the U.S. urban population for the CPI-U index. The resulting basket includes approximately 200 item strata grouped into eight major categories, such as , apparel, and medical care, with thousands of specific products priced across sampled retail outlets. Specific items within these strata are chosen via multistage probability sampling: first, urban areas and outlet types are selected based on population and sales volume; then, from those outlets, individual products are picked using checklists of common items or direct consumer purchase reports to ensure representation of actual buying patterns. This process prioritizes frequently purchased, stable items while incorporating updates for new goods, like electronics, when expenditure data indicates significance, though the basket remains largely fixed between weight revisions to maintain index consistency. Weights, or relative importances, represent each item's share of total consumer expenditures from the CE data, expressed as percentages summing to 100 across the basket; for instance, has historically accounted for about one-third of the total due to its dominant spending role. These weights are applied in a Laspeyres-type formula to aggregate price relatives: BLS updates weights annually as of the 2023 reference period, using a single calendar year's CE data—previously biennial—to reduce lag in reflecting consumption shifts, such as increased online spending or post-pandemic behavioral changes. For the 2025 CPI, weights incorporate 2023 expenditures, with relative importances published for transparency and adjusted for geographic and population variations in local indexes. This periodic refresh aims to align the index with empirical spending but can introduce discontinuities if major economic disruptions alter patterns between surveys.

Price Data Collection and Aggregation

The (BLS) collects Consumer Price Index (CPI) price data through two primary surveys: the Commodities and Services survey, which gathers prices from retail and service outlets, and the Housing survey, which focuses on housing costs. Prices are obtained via personal visits, telephone interviews, and electronic collection methods, with field representatives pricing approximately 80,000 items monthly across roughly 23,000 retail and service establishments nationwide. Collection occurs throughout the month, divided into three roughly equal pricing periods to capture mid-month averages, ensuring representation of typical consumer timing. Sampling for outlets and items employs a multistage probability to minimize and ensure national representativeness. Primary sampling units (PSUs) are selected from and nonmetropolitan counties, stratified by population size and region, with probability proportional to size selection favoring larger urban areas covering about 93% of the U.S. population. Within selected PSUs, outlets are sampled from business registries like the Bureau's frame, and specific items are chosen based on Consumer Expenditure Survey (CE) data, with outlets providing multiple price quotes per item category to account for variability. For , a separate sample of approximately 40,000 rental units is drawn from and other records, with rents collected bimonthly or quarterly depending on the area. Imputations handle missing prices, using data from similar items or prior periods to maintain continuity. Aggregation begins at the elementary level, where individual price quotes are converted to price relatives (current price divided by base-period price) and averaged—using arithmetic means for most categories or geometric means for those with high substitution potential, such as apparel—to form basic indexes. These basic indexes are then combined into higher-level aggregates via a fixed-basket akin to the Laspeyres index, weighting components by their relative importance derived from CE survey expenditures from two to three years prior, updated every two years. The overall CPI is a weighted of these subindexes: CPI=i=1nCPIi×weightii=1nweighti\mathrm{CPI} = \frac{\sum_{i=1}^{n} \mathrm{CPI}_i \times \mathrm{weight}_i}{\sum_{i=1}^{n} \mathrm{weight}_i} where CPIi\mathrm{CPI}_i are lower-level indexes and weighti\mathrm{weight}_i reflect expenditure shares, chained across geographic areas using population weights from the decennial . Seasonal adjustments apply to volatile items like food and apparel using moving s or regression models, while core CPI excludes food and energy for stability. This process yields monthly indexes relative to a base period (e.g., 1982-1984 = 100), published around the 10th-13th of the following month. The CPI facilitates adjustments for inflation across time periods and derivation of inflation rates. Year-on-year CPI inflation measures the percentage change in the index over the preceding 12 months, ((CPItCPIt12)/CPIt12)×100(( \mathrm{CPI}_t - \mathrm{CPI}_{t-12} ) / \mathrm{CPI}_{t-12} ) \times 100, representing the standard reported inflation rate for a given month. In contrast, the cumulative price increase over any specified period is the total percentage change between CPI index levels at the start and end of that period, calculated similarly as ((CPIendCPIstart)/CPIstart)×100(( \mathrm{CPI}_\mathrm{end} - \mathrm{CPI}_\mathrm{start} ) / \mathrm{CPI}_\mathrm{start} ) \times 100. To determine the equivalent value of a current amount in past dollars, divide the current amount by the cumulative inflation factor, defined as the ratio CPIcurrent/CPIpast\mathrm{CPI}_\mathrm{current} / \mathrm{CPI}_\mathrm{past}. This factor is derived from BLS CPI data series, accessible via official BLS tools and calculators. Minor variations may occur due to rounding or selection of specific monthly CPI values, with the national CPI as the benchmark.

Adjustments for Quality and Substitution

The Bureau of Labor Statistics (BLS) implements quality adjustments in the Consumer Price Index (CPI) to isolate pure price changes from improvements in product characteristics, preventing overstatement of inflation when goods enhance in value through features like durability, safety, or performance. For instance, in the new vehicles category, adjustments are derived from manufacturer-reported costs for specific attributes such as fuel economy, reliability, and added safety features, with these implicit adjustments applied when models are replaced in the sample. Hedonic regression models are employed for categories like apparel, personal computers, and televisions, where price differences are decomposed into contributions from measurable attributes (e.g., processor speed or screen resolution), subtracting the estimated value of quality gains from observed price increases. These methods, refined since the 1990s, aim to reflect consumer valuation of enhancements, though empirical validation relies on econometric assumptions about demand elasticities. Substitution adjustments address consumer shifts toward relatively cheaper alternatives, which a fixed-basket Laspeyres index like the traditional CPI overlooks, leading to upward bias in measured . Since 1999, the BLS has applied a to calculate most elementary (basic) indexes, approximating a (typically unit elasticity) among close substitutes within categories like or apparel, thereby partially mitigating lower-level substitution bias estimated at 0.25 percentage points annually by the 1996 Boskin Commission. At higher aggregation levels, the standard CPI-U retains a fixed-weight Laspeyres structure, but the experimental Chained CPI-U (C-CPI-U), introduced in 2002, uses a Tornqvist superlative index that allows annual weight updates based on prior-period expenditures, further incorporating upper-level substitution effects. These reforms, implemented following Boskin recommendations that identified total substitution bias at 0.4 percentage points per year, have reduced reported CPI growth by approximately 0.2 percentage points annually in basic indexes. Debates persist over the adequacy of these adjustments, with some analyses suggesting quality imputations may understate if hedonic models overattribute value to features not uniformly demanded by , as evidenced by discrepancies in durable where real-world substitution elasticities deviate from unit assumptions. For example, post-1999 geometric means have been critiqued for assuming symmetric substitution responses that do not fully capture outlet shifts or trade-offs in practice, potentially lowering measured by embedding optimistic behavioral assumptions. Conversely, BLS evaluations indicate that unadjusted changes would overstate in tech-heavy categories, with hedonic applications reducing index growth by 0.1 to 0.3 points in affected items like . Empirical studies, including BLS simulations, support the directional accuracy of these methods but highlight challenges in quantifying outlet or heterogeneous consumer preferences, underscoring ongoing refinements like expanded scanner data integration since 2019.

Component Categories

Food, Energy, and Volatile Items

The food and energy categories in the Consumer Price Index (CPI) represent essential household expenditures subject to pronounced price swings driven by supply-side disruptions rather than broad demand pressures. Food, comprising groceries purchased for home preparation and meals consumed away from home, accounted for 13.555% of the CPI-U basket in December 2023, with food at home at 8.167% and food away from home at 5.388%. Energy, encompassing motor fuels and household utilities, held a 6.655% weight, including gasoline (3.261%), electricity (2.428%), and natural gas service (0.688%). These components together influence approximately 20% of the overall index, making their fluctuations a key driver of headline CPI variability. Price volatility in food stems primarily from agricultural yield variations due to weather events, pests, and policies, which can cause sharp deviations uncorrelated with monetary conditions. For instance, prices rose 10.4% in 2022, propelled by a 11.8% surge in food-at-home costs amid global strains and shortages. By 2023, this moderated to a 2.7% annual increase, with at home up only 1.3%, reflecting eased wholesale pressures but persistent exposure to outcomes. prices exhibit even greater instability, tied to geopolitical events, extraction costs, and inventory levels; and , for example, are highly sensitive to crude oil supply interruptions. Owing to this volatility, and are routinely excluded from "core" CPI measures used by policymakers to gauge underlying inflationary trends, as these items respond to transient shocks like droughts or oil embargoes rather than persistent wage-price spirals addressable by adjustments. In 2022, their outsized contributions— adding over 1.3 points and amplifying total CPI to 6.5%—highlighted how headline figures can diverge from core rates, which rose more steadily at 5.5%. Such exclusions facilitate analysis of demand-driven inflation but may underrepresent the lived cost pressures on consumers dependent on these staples. Empirical data from the underscore this pattern, with indices fluctuating by double digits in response to events like the 2022 Russia-Ukraine conflict, while core components show smoother trajectories.

Housing and Owner-Occupied Costs

The subcategory within the CPI's housing group measures price changes for housing services provided by both rented and owner-occupied residences, comprising approximately 36 percent of the overall CPI-U weight in 2023. This weight derives from the Consumer Expenditure Survey, which allocates household spending on based on reported outlays for rent and imputed values for owners. excludes non-consumptive elements like principal payments, which represent asset accumulation rather than periodic service flows, and focuses instead on the economic cost of occupancy. For owner-occupied units, which represent about two-thirds of U.S. households, the BLS calculates owners' equivalent rent (OER) to proxy the implicit rental of services. OER estimates what tenants would pay to rent comparable owner-occupied properties, derived from a stratified sample of roughly 40,000 renter-occupied units surveyed every six months across 75 urban areas. These units are selected via , weighted to match owner-occupied characteristics such as geographic location, structure type, age, and square footage, ensuring representativeness without direct owner surveys that could introduce from non-response or recall errors. Price relatives for OER are computed as the ratio of current to previous-period rents for unchanged units, aggregated using geometric means to reflect consumer substitution toward lower- alternatives within quality classes. The rental equivalence methodology for OER, phased in starting 1983 and fully adopted by January 1987, replaced earlier approaches that incorporated home purchase prices and mortgage costs, which BLS determined overemphasized asset transactions over service consumption. This shift aligned CPI more closely with a cost-of-living framework by capturing only the periodic of , excluding elements like taxes (partially reflected in rental markets) and homeowner premiums, which are tracked separately under operations. from BLS validation studies indicates OER tracks rental price changes closely, with correlations exceeding 0.95 over multi-year periods, though rental contracts' stickiness—due to lease durations averaging 12 months—can delay index responses to market shifts by 6-12 months. In practice, OER and rent indexes have shown similar trajectories; for example, both rose 4.8 percent over the 12 months ending May 2022, contributing disproportionately to overall CPI increases amid post-pandemic supply constraints. By September 2025, costs accounted for over half of the 3.0 percent year-over-year CPI-U rise, underscoring their volatility relative to the all-items index due to limited short-term supply elasticity in markets. Quality adjustments, such as hedonic regressions for structural improvements or neighborhood changes reported by respondents, ensure constant-quality pricing, though BLS notes potential underestimation if unobservable amenities like views or proximity to amenities diverge between rental and owner samples.

Healthcare, Education, and Services

The medical care component of the CPI, which encompasses healthcare services and commodities, held a relative importance of approximately 8.5% in the U.S. expenditure basket as of the 2023 weight update. This category tracks price changes for and related services (about 40% of medical care), physician and dental services (around 20%), prescription drugs (roughly 10%), and premiums, with data collected monthly from providers, pharmacies, and insurers across urban areas. BLS employs a mix of direct for out-of-pocket costs and imputed estimates for , where premiums are adjusted based on enrollment changes rather than pure service price , potentially understating cost pressures from rising utilization or administrative overhead. Healthcare price measurement faces inherent challenges due to rapid technological advancements and heterogeneous service delivery, complicating quality adjustments; for instance, BLS uses for but often carries forward hospital prices to minimize respondent burden, which may lag actual market shifts. Empirical data show medical care outpacing the overall CPI, with a 0.5% rise in 2023 after 4.0% in 2022, driven by nonprescription drugs (up 8.3%) and services amid supply constraints. Critics argue that excluding third-party payer dynamics, such as Medicare/ reimbursement changes, distorts the index's reflection of consumer cost burdens, as transaction prices capture only a of total healthcare spending growth. Education and communication services, weighted at about 6.0% in 2023, include college tuition and fees (the largest subcomponent), elementary/secondary schooling, textbooks, and telecom services. BLS surveys public and private institutions for tuition prices, applying quality adjustments for factors like credit hours or program enhancements, though these methods struggle with intangible improvements in educational outcomes or online delivery shifts. Tuition inflation has consistently exceeded general CPI, with college costs rising over 200% since 1980 adjusted for overall inflation, reflecting demand pressures from credentialism rather than pure price signals. Broader services—such as (5.5% weight), apparel/ (3.5%), and other personal care (1.5%)—aggregate diverse outlays where price collection relies on retail and provider sampling, often incorporating owner-occupied equivalents or proxies for non-market services. These categories exhibit lower volatility than goods but pose difficulties from customization and variability; BLS imputes prices for unpriced items via geometric means and adjusts for substitutions, yet debates persist over whether such methods adequately capture real cost escalations in labor-intensive sectors like eldercare or legal services. In 2023, services overall contributed modestly to CPI growth, tempered by productivity lags in non-tradable sectors.

Criticisms and Methodological Debates

An individual's experienced inflation may differ from the official CPI because the index measures average price changes based on a representative basket of goods and services reflecting typical urban consumer spending patterns, whereas personal consumption varies significantly across households. Those allocating higher proportions of their budget to categories like housing, food, or energy—which often exhibit volatile or divergent price movements from the overall average—may perceive higher or lower inflation rates than reported. For instance, during periods when energy prices surge disproportionately, heavy users of fuel or electricity will experience elevated costs not fully captured by the CPI's weighted average. The Bureau of Labor Statistics acknowledges this limitation, noting that the CPI provides a broad gauge of economy-wide inflation but does not precisely mirror any single household's cost changes.

Evidence of Upward Bias in Traditional Measures

The Boskin Commission, appointed by the U.S. Senate in 1995 and chaired by Michael Boskin, analyzed the Consumer Price Index (CPI) and concluded that it overstated the annual increase in the by approximately 1.1 percentage points during the mid-1990s, with a range of 0.8 to 1.6 percentage points. This upward bias stemmed primarily from four methodological shortcomings in the traditional CPI formula: substitution bias, quality adjustment deficiencies, outlet substitution bias, and inadequate accounting for new goods. The commission's estimates broke down as follows: substitution bias at 0.4 percentage points, unmeasured quality improvements and new goods at 0.6 percentage points, and housing cost measurement issues at 0.2 percentage points. Substitution bias arises because the traditional CPI employs a fixed basket of goods based on past expenditure patterns, failing to capture consumer responses to relative price changes by substituting toward cheaper alternatives. Economic theory, rooted in index number formulas, demonstrates that a Laspeyres index like the pre-reform CPI systematically overstates cost-of-living changes compared to a true cost-of-living index, as consumers adjust consumption to minimize expenditure. Empirical validation came from Bureau of Labor Statistics (BLS) internal studies and commission modeling, which quantified this effect using historical price and expenditure data, showing consumers shifting away from goods whose prices rose disproportionately. Quality change bias in traditional measures occurred when price increases for incorporated unmeasured improvements in or , yet the CPI attributed the full price rise to without deducting the value of enhanced . Prior to reforms, quality adjustments were applied sporadically and conservatively, primarily for apparel and , leaving substantial overstatement in categories like automobiles and medical devices where technological advances reduced effective costs. The commission cited econometric analyses of durable prices, revealing that hedonic adjustments—accounting for attributes like computing power or —could lower reported by 0.2 to 0.6 percentage points annually, based on pre-1990s . Outlet and new goods biases further contributed to overstatement, as traditional CPI sampling underweighted shifts to lower-price retailers (e.g., discount chains) and delayed incorporation of innovative products that expanded consumer choices and lowered effective prices. BLS outlet surveys from the and indicated that consumers increasingly shopped at efficient discounters, yet the CPI's pricing relied on outdated establishment samples, inflating averages by 0.1 to 0.2 percentage points. Similarly, the slow introduction of new goods, such as personal computers in the , meant their welfare-enhancing entry was not reflected until after , per commission simulations using historical product introduction data. These biases cumulatively implied that traditional CPI inflation rates, such as the reported 3-4% annual averages in the and early , overstated true cost-of-living increases by over 25% in relative terms, affecting policy metrics like real GDP growth and . Chairman testified in 1997 that the evidence from Boskin and supporting studies confirmed the CPI's upward tilt with "near certainty," prompting methodological shifts like geometric weighting for substitution. While some academic critiques, such as those questioning the precision of Boskin's aggregation, exist, the directional evidence for upward bias in pre-reform CPI aligns with foundational economic principles of consumer optimization and product evolution.

Arguments for Downward Bias Post-Reforms

Critics of post-1996 CPI methodological reforms, including the adoption of geometric means for lower-level aggregation and expanded hedonic quality adjustments, contend that these changes have introduced or amplified downward biases by overcorrecting for previously identified upward biases. The Boskin Commission's estimate of a 1.1 annual overstatement was addressed through reforms that reduced reported CPI growth, but subsequent analyses suggest that substitution adjustments assume unrealistically high consumer elasticities, understating during periods of broad-based price increases where substitution options are limited, such as in essential goods like and healthcare. A key area of alleged downward lies in the treatment of costs, which constitute approximately 33% of the CPI basket as of 2023. Owners' equivalent rent (OER), used to proxy housing costs for the roughly two-thirds of households that own homes, has been criticized for understating due to methodological flaws in sampling and age- adjustments that fail to adequately capture the rising opportunity costs of homeownership, including surging home prices and rates that outpaced OER growth; for instance, between 2000 and 2020, median home prices rose by over 150% while OER averaged below CPI overall. Empirical models indicate this results in a substantial , with one analysis estimating a persistent downward in the component sufficient to lower overall CPI by 0.2-0.5 percentage points annually. Hedonic adjustments for quality improvements, expanded post-reforms to account for technological advances in goods like and apparel, are argued to overattribute price declines to non-price factors, thereby deflating measured beyond actual consumer benefits. In apparel, for example, the CPI has understated increases due to inadequate linking of style changes and outlet shifts, with showing true 1-2% higher annually than reported from 1990 onward. Critics, including some economists, assert that such adjustments lack robust validation for subjective gains and serve to systematically lower CPI figures, potentially by 0.3-0.6 points as originally estimated for correction but now deemed excessive. These arguments are supported by component-specific empirical discrepancies, where alternative calculations excluding post-reform adjustments yield higher inflation rates; however, evaluations maintain that overall biases remain small and balanced, attributing downward claims to misinterpretations of enhancements rather than systematic error.

Empirical Studies and Alternative Calculations

The Boskin Commission, established by the U.S. in 1995, analyzed CPI using econometric models and historical , estimating that the index overstated annual cost-of-living changes by 1.1 points as of the mid-1990s, with contributions from substitution (0.4 points), change (0.6 points), and smaller effects from unmeasured new goods and outlet shifts. This assessment drew on empirical comparisons of fixed-basket versus cost-of-living indices, revealing that consumers shift expenditures to cheaper alternatives not fully captured in arithmetic CPI formulas, and that hedonic adjustments for improvements in goods like were inconsistent. The commission's findings prompted BLS methodological revisions, including adoption of geometric means for rental equivalence and certain food categories starting in 1999, which reduced reported by about 0.2 points annually. Subsequent peer-reviewed retrospectives, such as a 2006 NBER analysis by commission members, validated the original bias estimate through updated data on durable goods price declines and consumer behavior, while acknowledging that BLS changes lowered the overstatement to near zero by the early , though potential residual upward bias persisted in areas like and medical services due to incomplete outlet and quality adjustments. Empirical tests in academic literature, including simulations of Laspeyres versus chained indices, confirm that pre-reform CPI exhibited measurable upward formula bias averaging 0.2-0.5 points yearly, diminishing post-adjustments but varying by economic cycle. A 1996 BLS staff paper further quantified lower-level substitution bias in elementary aggregates, estimating it at 0.1-0.3 points based on scanner data from retail outlets. As an official alternative, the Personal Consumption Expenditures (PCE) price index, calculated by the , employs a Fisher chained formula that dynamically updates weights quarterly to reflect substitution, typically reporting 0.3-0.5 points lower than CPI over 2000-2023, with greater divergence during volatile periods like 2021-2022 shocks. Private alternatives include ShadowStats, which reconstructs CPI using pre-1980 and pre-1990 methodologies excluding geometric weighting and expanded hedonic adjustments, yielding estimates 3-7 points above official CPI (e.g., 10-15% versus 2-3% in 2023), though critics note its reliance on extrapolated data without full replication of historical baskets limits empirical rigor and shows near-identical trend shapes to official series. The Chapwood Index, derived from surveys of 500 urban items across 50 U.S. cities, claims 8-13% annual cost increases for 2011-2023 (versus official 2-3%), focusing on , healthcare, and , but lacks peer-reviewed validation and has been deemed implausibly high relative to aggregate expenditure data. A 2024 AEI proposes a "more accurate" CPI variant adjusting for underweighted owner-occupied housing and services, estimating that official CPI understated real wage growth by 1-2 points annually since 2010 when recalibrated against micro-level earnings data.

Policy Uses and Economic Effects

Influence on Central Banking and Interest Rates

The Consumer Price Index (CPI) exerts significant influence on central banking by serving as a primary gauge of inflationary trends, guiding decisions on interest rate adjustments to maintain . Central banks in inflation-targeting frameworks, adopted widely since the , reference CPI or analogous measures to anchor expectations and calibrate policy responses. When CPI indicates above target levels—often set at 2%—policymakers raise short-term s to elevate borrowing costs, dampen , and mitigate upward price pressures. Conversely, below-target CPI readings may prompt rate cuts to encourage spending and . Numerous central banks explicitly incorporate CPI into their targeting regimes. The mandates maintaining CPI inflation at 2%, utilizing its as the primary tool to influence economic activity and align prices with this objective. The targets CPI inflation within a 2-3% band, adjusting the cash rate to balance growth and stability. The Central Bank of Chile employs CPI for its 3% target (with a ±1% tolerance), demonstrating how CPI deviations directly inform rate path modifications. In the United States, the prioritizes the Personal Consumption Expenditures (PCE) price index for its 2% goal but closely monitors CPI due to its timeliness and market impact. Elevated CPI figures, such as the 9.1% year-over-year peak in June 2022, contributed to the Fed's rapid tightening cycle, raising the by 525 basis points from March 2022 to July 2023 to combat post-pandemic . The (ECB), targeting 2% (HICP) —a metric akin to CPI—likewise assesses national CPI data within aggregates to shape deposit facility rate decisions, as persistent CPI-HICP variances signal risks to medium-term stability. This reliance underscores CPI's role in fostering credible policy reactions, though methodological differences across indices can introduce variances in perceived inflationary momentum.

Indexation in Social Programs and Wages

In many countries, social programs such as pensions and incorporate cost-of-living adjustments (COLAs) tied to the consumer price index (CPI) to preserve beneficiaries' against . In the United States, Social Security benefits have been automatically indexed to the CPI for Urban Wage Earners and Clerical Workers (CPI-W) since 1975, with the annual COLA calculated as the percentage increase in the average CPI-W from the third quarter of the previous year to the third quarter of the current year. For instance, the 2026 COLA was set at 2.8%, reflecting the CPI-W rise, and will increase average monthly retirement benefits by approximately $56 for nearly 71 million recipients starting January 2026. This mechanism applies similarly to (SSI) and certain veterans' benefits, ensuring inflation-linked escalations without discretionary legislative action. Federal civilian retiree annuities under the Office of Personnel Management (OPM) also use CPI-based indexation, with COLAs capped or tiered—for example, if the CPI increase exceeds 2% but does not surpass 3%, the adjustment is limited to 2%. State-level public pensions, such as those from the , compare annual CPI changes to retirees' at the time of retirement to determine adjustments, though these may be limited by funding constraints. Internationally, similar CPI-linked indexing appears in programs like Canada's , which adjusts quarterly based on the CPI, and Australia's Age Pension, tied to the CPI alongside wages and pensions indices. These adjustments aim to counteract erosion in , but their effectiveness hinges on the CPI variant's alignment with beneficiaries' consumption patterns, such as the debate over using elderly-specific CPI-E instead of CPI-W for retirees. Wage indexation using CPI is less ubiquitous than in social programs but occurs in collective bargaining agreements, public sector salaries, and some minimum wage laws to mitigate inflationary wage erosion. In the U.S., union contracts in industries like or transportation often specify COLAs pegged to CPI-U or regional indices, with adjustments applied annually or semi-annually—for example, certain federal employee pay scales reference CPI for locality adjustments. Private employers may offer discretionary COLAs based on CPI-W, particularly for blue-collar roles, though adoption varies; data from the indicate that only about 30-40% of private sector workers receive formal inflation-linked raises. This annual basis highlights the CPI's role in precise adjustments, as the inflation-adjusted equivalent of a salary from the 1970s varies depending on the exact year due to high inflation during that decade—especially the 1973–1975 and 1979–1980 periods—with CPI annual averages of 38.8 in 1970, 53.8 in 1975, and 72.6 in 1979 (1982-84=100 base). The inflation-adjusted equivalent is calculated by multiplying the past wage by the ratio of the current CPI-U to the past CPI-U: past wage × (current CPI-U / past CPI-U). To determine if a nominal wage increase has maintained real purchasing power, compare this adjusted value to the current nominal wage; if it equals or exceeds it, purchasing power has been preserved or increased. In , countries like and mandate CPI-indexed increases in national labor accords, as seen in Belgium's 2022 adjustment of 11.08% tied to health index (a CPI variant). Such mechanisms stabilize during inflationary periods but can amplify wage-price spirals if not moderated, as evidenced by historical episodes where rigid exacerbated cycles.

Fiscal Implications and Government Budgeting

The Consumer Price Index (CPI) directly influences government budgeting through mandatory mechanisms that automatically adjust federal expenditures and revenues for . In the United States, Social Security benefits, which account for about 23 percent of total federal outlays in 2025, receive annual cost-of-living adjustments (COLAs) based on the CPI for Urban Wage Earners and Clerical Workers (CPI-W). The 2026 COLA, announced on October 24, 2025, stands at 2.8 percent, derived from the average CPI-W increase for the third quarter of 2025 over the same period in 2024, resulting in an estimated $50 billion increase in Social Security spending for the year. Similar CPI-linked adjustments apply to (SSI), federal civilian and military pensions, and veterans' compensation, collectively amplifying during periods of rising prices. CPI indexation extends to revenue provisions, where brackets, standard deductions, and exemption amounts are adjusted annually using the CPI for All Urban Consumers (CPI-U) to prevent "bracket creep," whereby pushes taxpayers into higher brackets without real income gains. This practice, implemented starting with tax year 1985 under the Deficit Reduction Act of 1984, raised brackets by 5.4 percent for tax year 2023 based on CPI-U data from the prior year, thereby moderating revenue growth relative to nominal wage increases. Without such adjustments, would generate unlegislated revenue windfalls, but the mechanism ensures fiscal neutrality in real terms, though it can constrain budget surpluses during inflationary episodes by limiting bracket-driven receipts. In the federal budgeting process, the (CBO) and (OMB) integrate CPI-based assumptions into baseline projections, typically forecasting 2 percent annual CPI growth for the next to estimate future outlays and receipts. Actual CPI deviations affect these baselines; for instance, sustained higher CPI readings elevate projections for indexed by 1-2 percent of GDP over a if averages 0.5 points above baseline, while also boosting revenues through higher nominal incomes but often netting wider deficits due to disproportionate spending growth. Discretionary appropriations indirectly reference CPI trends for allowances in agency requests, though Congress must explicitly authorize such adjustments. Fiscal implications of CPI reliance include amplified deficit risks from automatic stabilizers, as indexation embeds procyclical spending expansions without regard to fiscal sustainability or underlying productivity. Empirical analysis shows that unexpected inflation erodes real public debt values—reducing U.S. debt-to-GDP ratios by up to 5 percent during surprise episodes above 5 percent annually—but simultaneously hikes nominal interest payments on new issuance, offsetting gains and pressuring long-term budgets. In high-inflation contexts, such as 2021-2022 when CPI peaked at 9.1 percent, indexed outlays surged faster than revenues, contributing to a $1.4 trillion deficit increase partly attributable to COLA effects. This dynamic underscores CPI's role in embedding inflationary persistence into fiscal policy, potentially necessitating discretionary offsets or reforms to chained CPI variants for deficit control.

Variations Across Economies

United States Implementation Details

The Consumer Price Index (CPI) in the is calculated monthly by the U.S. (BLS), a division of the Department of Labor. It tracks the average percentage change over time in prices paid by urban consumers for a fixed basket of goods and services representative of typical household expenditures. The index uses a base period of 1982–1984 equaling 100, with current values expressed relative to that benchmark. Prices are collected from approximately 23,000 retail and service establishments across 75 urban areas, covering about 80,000 items monthly through a of direct surveys, scanner data, and administrative records. Two primary variants exist: the CPI for All Urban Consumers (CPI-U), which covers roughly 93 percent of the U.S. population including professionals, self-employed individuals, and retirees; and the CPI for Urban Wage Earners and Clerical Workers (CPI-W), which focuses on about 29 percent of the population primarily in blue-collar and clerical occupations. The CPI-U serves as the headline measure for broad economic analysis and policy, while the CPI-W underpins cost-of-living adjustments for Social Security benefits and certain federal pensions. A chained CPI-U variant, introduced in 2002, incorporates upper-level substitution effects using a Törnqvist formula to reflect consumer shifts toward relatively cheaper goods, though it is published with a two-month lag. The expenditure basket comprises over 200 item categories grouped into eight major aggregates, with weights derived biennially from the BLS Consumer Expenditure Survey (CE) of about 30,000 households. For indexes from to 2023, weights reflect 2021 spending patterns, with allocated 33.4 percent, transportation 17.0 percent, and beverages 13.4 percent, care 8.5 percent, and communication 6.1 percent, 5.5 percent, apparel 2.5 percent, and other 3.6 percent. Weights are updated every two years to capture evolving consumption, a shift from decennial revisions pre-2002, ensuring relevance to current habits without frequent rebasing that could disrupt long-term series comparability. Computation employs a Laspeyres fixed-basket at the lowest aggregation levels, aggregating upward using expenditure weights: CPI = (updated cost / base period cost) × 100. To mitigate substitution , geometric means replace arithmetic means for about 61 percent of lower-level item weights since 1999, allowing modest consumer response to relative price changes within categories. Quality adjustments include for goods like computers and apparel to isolate price changes from improvements, and rental equivalence for the housing component (32 percent of the basket), which estimates owners' costs via imputed rents rather than asset prices to focus on consumption flows. These methodological refinements, implemented progressively since the and , aim to enhance accuracy amid product innovation and outlet shifts, though they have sparked debate over potential understatement of lived experiences. Seasonal adjustments are applied to certain series using a Winters model, with annual averaging to mitigate volatility.

International Standards and Divergences

The primary international standards for compiling consumer price indices (CPIs) are outlined in the Consumer Price Index Manual: Concepts and Methods (2020), a joint publication by the (ILO), (IMF), Organisation for Economic Co-operation and Development (OECD), , and World Bank. This manual recommends that CPIs measure the average change over time in prices paid by households for a fixed of consumer goods and services, using a Laspeyres-type index formula based on expenditure weights from household surveys, with adjustments for quality changes and new goods. Key principles include targeting the resident household population, adopting an acquisition approach for goods (prices at purchase rather than consumption), covering both urban and rural areas unless justified otherwise, and applying geometric means for elementary aggregates to approximate substitution effects within item categories. These standards build on the 2003 ILO Resolution concerning Consumer Price Indices, adopted by the Seventeenth International Conference of Labour Statisticians, which emphasizes comparability across countries through consistent conceptual frameworks while allowing flexibility for national circumstances. The manual promotes frequent weight updates (ideally annually) using data, imputation for missing prices, and hedonic methods for quality adjustments in items like . For owner-occupied , it advises using rental equivalence or user-cost approaches to capture imputed rents, avoiding direct price inclusion to focus on consumption costs. Despite these guidelines, significant divergences persist in national implementations, complicating cross-country comparisons. For instance, countries vary in updating expenditure weights: many nations revise annually, but some update less frequently (e.g., every five years), leading to outdated baskets that underrepresent shifts in consumption patterns like increased online purchases. Treatment of owner-occupied housing exemplifies methodological divergence; the United States employs rental equivalence, estimating costs via comparable rental markets, while countries like Australia and Canada incorporate actual acquisition costs or net rents, potentially overstating inflation during housing booms. Scope differences also arise: some CPIs (e.g., Japan's) exclude rural areas or focus on wage-earner households, narrowing coverage compared to comprehensive household targets recommended internationally. Quality adjustment practices vary, with advanced economies using hedonic regressions for durables, but emerging markets relying more on simple overlap or carry-forward methods, which can bias indices upward by ignoring technological improvements. These variations, often justified by data availability or institutional priorities, result in non-equivalent inflation measures, as evidenced by discrepancies in owner-occupied housing contributions to CPI during 2021-2023 across OECD peers.

References

Add your contribution
Related Hubs
User Avatar
No comments yet.