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For any question on data and metadata, please contact: Eurostat user support |
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1.1. Contact organisation | Statistics Sweden (SCB), the National Statistical Institute of Sweden |
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1.2. Contact organisation unit | Section for consumer prices Unit for business, foreign trade and prices Department for Economic statistics and analysis |
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1.5. Contact mail address | Postal address: Statistics Sweden |
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2.1. Metadata last certified | 02/08/2023 | ||
2.2. Metadata last posted | 02/08/2023 | ||
2.3. Metadata last update | 02/08/2023 |
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3.1. Data description | |||
The harmonised index of consumer prices (HICP) is a consumer price index (CPI) that is calculated according to a harmonised approach. It measures the change over time of the prices of consumer goods and services acquired by households (inflation). Due to the common methodology, the HICPs of the countries and European aggregates can be directly compared. |
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3.2. Classification system | |||
European classification of individual consumption according to purpose (ECOICOP) |
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3.3. Coverage - sector | |||
The HICP covers the final monetary consumption expenditure of the household sector. |
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3.4. Statistical concepts and definitions | |||
The main statistical variables are price indices. |
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3.5. Statistical unit | |||
The basic unit of statistical observation are prices for consumer products. |
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3.6. Statistical population | |||
3.6.1. Statistical target population The target statistical universe is the 'household final monetary consumption expenditure' (HFMCE) on the economic territory of the country by both resident and non-resident households. The household sector to which the definition refers, includes all individuals or groups of individuals irrespective of, in particular, the type of area in which they live, their position in the income distribution and their nationality or residence status. These definitions follow the national accounts concepts in the European System of Accounts. 3.6.2. Coverage error population No deviations. |
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3.7. Reference area | |||
3.7.1. Geographical coverage The HICP refers to the economic territory of a country as referred to in paragraph 2.05 of Annex A to ESA 2010, with the exception that the extraterritorial enclaves situated within the boundaries of a Member State or a country are included and the territorial enclaves situated in the rest of the world are excluded. 3.7.2. Coverage error regions The target is to have a good representation of the overall (national) expenditure and our samples are designed accordingly. Certain geographical areas are excluded from local price collection since they are deemed not to have a significant effect on the overall estimate i.e. their exclusion is not thought to induce bias. |
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3.8. Coverage - Time | |||
3.8.1. Start of time series The HICP series started in January 1997. 3.8.2. Start of time series - national specifics Swedish HICP data is publically available since January 1996. However, calculation started already in January 1995. HICP-CT is available since December 2002. |
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3.9. Base period | |||
2015=100 |
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The following units are used:
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HICP is a monthly statistics. |
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6.1. Institutional Mandate - legal acts and other agreements | |||
Harmonised Indices of Consumer Prices (HICPs) are harmonised inflation figures required under the Treaty on the Functioning of the European Union. Regulation (EU) 2016/792 of the European Parliament and the Council of 11 May 2016 (OJ L 135) sets the legal basis for establishing a harmonised methodology for the compilation of the HICP and the HICP-CT. This regulation is implemented by Commission Regulation (EU) 2020/1148 of 31 July 2020. Further documentation, can be found in Eurostat’s website - HICP dedicated section, namely recommendations on specific topics, under the methodology page, and guidelines, under the quality page. |
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6.2. Institutional Mandate - data sharing | |||
None. |
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7.1. Confidentiality - policy | |||
Regulation (EC) No 223/2009 of the European Parliament and of the Council, of 11 March 2009, on the transmission of data subject to statistical confidentiality to the Statistical Office of the European Communities The relevant national legislation is the public access to information and secrecy act (2009:400) - this prevents disclosure of data that identify a person or economic entity either directly or indirectly. An exception is if there exist a valid purpose (such as for research) and that the disclosure do not cause damage to an individual or company. Prices, weights and item descriptions are considered confidential if they reveal a company, person, brand, product name, price or turnover etc. Therefore microdata within most elementary aggregates are confidential. Price data from the government sector (national or local level) is not confidential, such as the fee for water from a municipality. |
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7.2. Confidentiality - data treatment | |||
The published figures should not reveal any individual data. If the business situation is such that a published index reveals the data source, the index is not published. |
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In line with the Community legal framework and the European Statistics Code of Practice Eurostat disseminates European statistics on Eurostat's website (see point 10 - 'Accessibility and clarity') respecting professional independence and in an objective, professional and transparent manner in which all users are treated equitably. The detailed arrangements are governed by the Protocol on impartial access to Eurostat data for users. |
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8.1. Release calendar | |||
The HICP is released according to Eurostat’s Release calendar. The calendar is publically available and published at the end of the year for the full following year. |
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8.2. Release calendar access | |||
Eurostat's website HICP calendar. The release of the Swedish HICP on Statistics Sweden’s web page follows the release calendar of the Swedish CPI, a few days before the Eurostat HICP release. |
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8.3. Release policy - user access | |||
In line with this protocol and on a strictly regulated basis, data on Harmonised Consumer Prices (HICPs) are sent for information to the European Central Bank (ECB) and to the European Commission Directorate General for Economic and Financial Affairs (DG ECFIN) under embargo the evening before the official release of data. |
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Monthly |
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HICP and HICP-CT are published on Statistics Sweden's webpage:
We publish the most recent figures in our press release for CPI and the longer time series in the statistical database (SSD). No data for sub-indices of HICP/HICP-CT are published at Statistics Sweden's web page. Statistics Sweden do not produce or publish flash estimates of the HICP. Statistics Sweden do not have any methodology document in English especially for the HICP. In the English version quality declaration for CPI, there is some information also about HICP: |
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10.1. Dissemination format - News release | |||
Statistics Sweden does not have a dedicated news release for the HICP. We do however include the HICP all-items inflation rate in the news release for the Swedish CPI/CPIF (for comparison in one graph). See in web page Konsumentprisindex (KPI) (scb.se). Eurostat's Euro indicators news release. |
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10.2. Dissemination format - Publications | |||
In the national publication, the HICP is available at overall level. Breakdowns by ECOICOP sub-aggregates are given for the national CPI but not for the HICP in the national publication. The CPI and the HICP are available on the website of Statistics Sweden (the NSI): www.scb.se. |
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10.3. Dissemination format - online database | |||
10.4. Dissemination format - microdata access | |||
None if not specifically asked for. |
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10.5. Dissemination format - other | |||
See also Eurostat's HICP section website. |
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10.6. Documentation on methodology | |||
The HICP Methodological Manual provides the reference methodology for the production of HICP. (https://ec.europa.eu/eurostat/web/products-manuals-and-guidelines/-/KS-GQ-17-015) 10.6.1. Documentation on methodology - national specifics The national website of Statistics Sweden presents a description of statistics in HTML and PDF formats. Specific documents on concepts and methods for the indices can also be found on the website. The national CPI was reviewed by a Government Commission and its report is available online with the reference 'SOU 1999:124' (in Swedish, with summary and annexes in English). The report is available through the link: http://www.regeringen.se/sb/d/108/a/1227 |
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10.7. Quality management - documentation | |||
Not available. |
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11.1. Quality assurance | |||
11.1.1. Quality management - Compliance Monitoring 11.1.2. Quality assurance - national specifics The Data collection department is responsible for data collection and initial data cleaning. The Section for consumer prices carries out further validation (outlier checks etc) of data. The Section for consumer prices employs a quality assurance system:
The main production meetings during a month are:
As for 'suspicious', we make use of a special method for detecting index developments which are extreme as compared to an historical average and which would also (if erroneous) have a large impact on the end result. (The idea behind this method is similar to the one in SELEKT, the generic editing tool described for example in the 2016 JOS paper 'SELEKT – A Generic Tool for Selective Editing' by A Norberg.). A measure of 'expected impact' is computed as the product of two other measures; 'potential impact' and 'suspicion'. Potential impact is in turn computed as the weight times the absolute value of (observed monthly rate of change – expected monthly rate of change), where the expected rate of change is a function of historical values for the same elementary product group and months. The suspicion measure, in turn, takes on values between 0 and 1 and is computed based on a comparison between the current rate of change and the lower and upper quartiles of the historical rates; if the rate of change is extreme, in the sense of being far away from the upper or lower quartile (taking the normal variation of the product group into account), suspicion will be close to one. If a suspicious index cannot be confirmed (for example if we are unable to get confirmation from the respondent), we are making a decision whether to include the suspicious change based on the effect on total CPI and how plausible the change is. |
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11.2. Quality management - assessment | |||
11.2.1. Compliance monitoring - last report and main results The last available compliance or follow-up report can be found in Eurostat's web page Quality - Harmonised Indices of Consumer Prices (HICP) - Eurostat (europa.eu). 11.2.2. Quality assessment - national specifics The quality of the HICP can be assessed to be very high. Its concepts and methodology have been developed according to international standards and using consumer price statistics experience from all EU Member States. HICPs are considered to be sufficiently accurate for all practical purposes they are put into. In particular it is the best measure of inflation for the euro area and European Union as whole as well as for the comparisons of inflation across countries for which it is compiled. The indices are disseminated around mid-month following a predetermined timetable. Statistics Sweden uses a system for managing process and product quality called ASPIRE (A System for Product Improvement, Review, and Evaluation). The outcome of an ASPIRE evaluation are quality indicators. Several uncertainty sources are considered such as:
Each uncertainty source is also assigned a risk rating depending upon its potential impact on the quality for the specific product. ASPIRE is an evaluation conducted by external experts.
Since HICP to a very large extent is based on CPI data, almost all improvements or deteriorations in the outcome for CPI will affect also HICP. Latest APSIRE result is from 2021, which was the 9th time the assessment was made. The overall score was the same as in the previous round (58.0). Improvements following an evaluation according to ASPIRE will affect the HICP. The evaluation is made every second year. Key recommendations for the coming two years 1. Replacement source for the Household Budget Survey Work has continued on using turnover data (such as scanner data) and the Structural Business Survey as alternative sources, on a small scale. 2. Data processing of scanner data The current system is described as ’good enough’ but it is not robust nor efficient. Given its evolution from development systems and the complexity of the various operations performed it should be considered an organisational risk. The NDK project should provide a strategic solution, but will need to be prioritised, resourced, timetabled and developed in close collaboration with the CPI team. The team should also investigate the use of machine learning techniques for investigative work with scanner data. 3. Monitoring the impact of COVID COVID has led to changing patterns of consumers’ expenditure and in changes to prices. It will be necessary to continue to monitor its effects, as the Swedish economy continues to recover and discuss them with users. 4. Managing risk The introduction of replacement weights for the HBS, the replacement of survey data by scanner and web scraped data, and the introduction of a new data processing system will all come on top of all the regular changes that need to be made to maintain the CPI as fit for purpose. This will need careful risk management to ensure the impact on the CPI is known and well planned. Other areas for consideration 1. Learning more from best practices outside the EU Sweden is actively involved in EU Task Forces and Working Groups and in receipt of grant funding for projects. Given that all this is within the constraints of the Harmonised Index of Consumer Prices, the team could consider developing further the already good links they have outside Europe with the Ottawa City Group on Price Statistics to ensure they benefit from a wider range of peer discussion. 2. Researching the impact of growing sales from overseas This is a particular weakness of the reliance on domestic sales weights for the CPI, given the growth in this area, and the potential for price development for overseas purchases to differ from domestic price development. Apart from ASPIRE, parts of the statistical production process are also reviewed internally. These reviews are regular, but only a sample of survey/process steps are evaluated every year. |
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12.1. Relevance - User Needs | |||
In addition to being a general measure of inflation, the HICP is also used in the areas of:
The euro area (evolving composition) index is used by the European Central Bank (ECB) as the main indicator for monetary policy management. The ECB and the European Commission's Directorate-General for Economic and Financial Affairs (DG ECFIN) use the HICP for assessing price stability and price convergence required for entry into European Monetary Union. Other users include: National Central Banks, financial institutions, economic analysts, the media and the public at large. 12.1.1. User Needs - national specifics The main users of the CPI and measures related to the CPI ate:
National users of HICP are:
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12.2. Relevance - User Satisfaction | |||
Statistics Sweden has a CPI board where important main users are members. These include:
The board has an advisory role for methodologies and principles used for CPI. All decisions on implementing a methodology or principle are taken by Statistics Sweden, not the CPI board. No general CPI user survey is carried out. |
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12.3. Completeness | |||
All ECOICOP indices at 5-digit level are produced. |
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13.1. Accuracy - overall | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
The accuracy of HICP is generally considered to be high. The accuracy of source data is monitored by assessing the methodological soundness of price and weight sources and the adherence to the methodological recommendations. There is a variety of data sources both for weights (National Account data, Household Budget Survey data, etc.) and prices (visits to local retailers and service providers and central collection via scanner data, mail, telephone, e-mail and the internet are used). The type of survey and the price collection methods ensure sufficient coverage and timeliness. The outlets, from which prices are collected, are chosen to represent the existing trade and services network and they are based usually on three main criteria:
All the private households in the economic territory of the country are covered, whether resident or not and irrespective of their income.
Main sources of random and systematic error in the statistical outputs The most important sources of inaccuracy in the HICP are the composition of the basket of goods (i.e. the weights), the sampling of retail outlets, products and product offers, and the incorporation of products that are new in the market. It is believed that new products in the market are the greatest source of inaccuracy. The source of inaccuracy caused by sampling is relatively large, but it can be estimated and can therefore guide the users of the statistics. New products can be a source of bias, a systematic under- or overestimation, most likely an overestimation; consumers choose products that are new in a market because they consider them to be better in relation to the price than existing products. The evaluation of quality differences in case of necessary changes is also very difficult. According to the principles, the valuation should be carried out based on the consumers’ valuations, which is very difficult in practice.
Bias in the Swedish HICP
Comments: 1. Even though weights and most samples are updated annually in the HICP/CPI, to the extent that consumers' expenditure pattern change also within the survey year, sample representativity bias may occur. The magnitude of this bias is thought to be small. Another example of such bias relates to the fact that many products are brought into the HICP using the overlap method in connection with annual resampling. Using this, any price level difference between two baskets are attributed to quality. In many cases this may be reasonable, but it rests on assumptions that are sometimes not valid (e.g. the existence of a free and functioning market as well as rational consumers). Carlsson et al (2020) estimated the following bias effects:
4. The Swedish HICP in general does not include cross-border transaction in line with the recommendation on cross-border purchases , and we thus mainly price products that are sold by firms within Sweden. There are however a few exceptions such as online clothing stores located in other European countries. 5. The coverage of the Swedish HICP is assessed to be good and fulfils the standards set out in the regulations. However there are a few consumption areas that are in principle included in the household monetary consumption expenditure, but are not covered in HICP for practical reasons. These include games of chance, narcotics, prostitution and the implicit service charge in life-insurance premiums. 6. For new cars we measure list prices, not taking into account individual discounts. For second-hand cars, we are using the index for new cars as a proxy during 2023, as our previous data source was discontinued and we were unable to find an acceptable way of carrying out quality adjustment with the new source. There is an ongoing development project during 2023 to find a way of treating quality change with the new source. 7. In the annual resampling procedure it is assumed that any differences in price level between previous and current year can be attributed to quality differences. This may be a valid assumption for example in a market with perfect competition, while in other cases not so. As a counter measure for some product categories such as electronics and household textiles, price collectors now select new products for the coming year already in September the year before (instead of in December). 8. The various quality adjustment methods used have their advantages and drawbacks. For example, in supported judgemental quality adjustment, there is always a certain degree of uncertainty in the assessment. 9. The household budget survey (HBS) has traditionally served as a good source for distributing HICP weights on lower aggregate levels. There has however been an increasing non-response rate for the HBS and due to this the most recently planned survey (2016) was cancelled. Weights for parts of the lower-level aggregates have not been updated since 2012, such as distribution between different types of clothing, furniture and household utensils. This mainly concerns lower-level weights within COICOP 03, 05, parts of 07, 09, 11.1 and 12. References: Carlsson, E. , Hillström, E. Norberg, A., Olsson, K., Ottosson, M., Ståhl, O., Tongur, C. (2020) Grants project report for a study on the impact of overlap methods on the CPI and HICP, Statistics Sweden. The report was written under the Eurostat Grant Agreement number 210549154 'New methodologies for HICP – Activity 1A'. |
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13.2. Sampling error | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
The HICPs are statistical estimates that are subject to sampling errors as they are based on a sample of consumer prices and weights relating to household expenditures from surveys, hence these are not the complete universe of all prices and expenditures but rather estimates. Also, the presence of purposive sampling in certain areas may influence variability which is remedied by keeping samples large if possible, e.g. within clothing (COICOP03). However, rich use of transaction data, API and web scraping has been a way of reducing variability and increasing sample sizes. Table: sampling error for Swedish HICP total
Sampling error for Swedish CPI total is published annually in the Quality Declaration, accessible for 2023 on the web page: Quality declaration, Consumer price index, 2023 (scb.se). |
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13.3. Non-sampling error | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
Not estimated. |
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14.1. Timeliness | |||
The full set of HICPs is published each month according to Eurostat’s Release calendar, usually between 15 and 18 days after the end of the reference month. Each year, the January release is published at the end of February to allow for the annual update of the weights, both of individual product groups and the relative country weights of Members States in the country group aggregates. The euro area flash estimate is published on the last working day of the reference month or shortly after that. |
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14.2. Punctuality | |||
Since the March 1997, launch of the HICP release, the HICP for the country groups aggregates has always been published on the dates announced in Eurostat’s Release calendar. |
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15.1. Comparability - geographical | |||
HICPs across Member States aim to be comparable. Any differences at all levels of detail should only reflect differences in price changes or expenditure patterns. To this end, concepts and methods have been harmonised by means of legislation. HICPs that deviate from these concepts and methods are deemed comparable if they result in an index that is estimated to differ systematically by less than or equal to 0.1 percentage points on average over one year against the previous year (Article 4 of Council and European Parliament Regulation (EU) 2016/792). |
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15.2. Comparability - over time | |||
HICP data are fully comparable over time. There have been several improvements in methodology since HICP was introduced with the aim of improving reliability and comparability of the HICP. These changes may have introduced breaks in time series. However back calculations under the newer standards were performed when appropriate basic data was available. |
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15.3. Coherence - cross domain | |||
Differences between the HICP and national CPI The following expenditure is included in the HICP but excluded from the national CPI:
The following consumption expenditure is included in the national CPI but excluded from the HICP:
The national CPI is designed for several kinds of use, but mainly for compensation. For many years now, the national CPI has been defined as a conditional Cost-of-Living Index (coli). This has implications for the upper level aggregation, which deviates from HICP rules. As from 2005, the national CPI uses a superlative index formula (Walsh) for annual link chaining between full years. As far as possible, the HICP and the national CPI share the same source data, data preparation and low-level aggregation. The national CPI is published with a breakdown according to ECOICOP. There is a CPI Board of Experts that has an advisory role for CPI principles and methodology. |
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15.4. Coherence - internal | |||
The HICPs are internally coherent. Higher level aggregations are derived from detailed indices according to well-defined procedures. |
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17.1. Data revision - policy | ||||||||||||
The HICP series, including back data, is revisable under the terms set in Articles 17-20 of Commission Implementing Regulation (EU) 2020/1148. 17.1.1. Data revision - policy - national specifics CPI After the official release of the CPI index figure for a specific month it cannot be revised. It will therefore apply in all contexts where references are made to the consumer price index, such as laws, ordinances or agreements. On a few occasions, mistakes in the creation or processing of data have resulted in 'incorrect' index numbers. As of 8 May 2000, the Statistical Database refers in part to the unrevised adopted total index numbers as of 1980 and in part to revised shadow index numbers for the total CPI and revised index numbers for product groups that are consistent with the shadow index numbers. The shadow index is used in case we detect major errors in the calculation or get revised information from our data sources. One main use of the CPI is indexation (in e.g. legal contracts) and for such purposes the unrevised series is often preferred.
Published inflation rate figures can be revised, but it is rare. CPI inflation is not calculated based on the adopted series but based on the shadow index numbers. Shadow index and revised inflation rates should be calculated if the effect of the error is larger than 0.1 percentage points on the monthly rate of change or annual inflation rate. HICP According to the EU regulations, all HICP numbers can both be revised and disseminated in preliminarily form under certain circumstances. However, Eurostat and Statistics Sweden have different policies on when inflation figures should be revised. This means that Eurostat may revise Swedish HICP numbers while Statistics Sweden does not revise them. When such situations have occurred, however, Statistics Sweden have for practical reasons also chosen to revise HICP, to ensure that the statistics are consistent. |
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17.2. Data revision - practice | ||||||||||||
A technical revision of the HICP series was carried out in January 2006, in preparation for the general change of the HICP index reference year to 2005=100.
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18.1. Source data | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
18.1.1. Weights i) The starting point for our HICP item weights calculation is t-2 household consumption data from national accounts. Furthermore, for the breakdown at more detailed levels we use other sources (see our answer to question 2). ii) The expenditures in (i) are then multiplied by an adjustment factor, to make them representative of year t-1. The adjustment factor (F) for aggregate K is calculated based on preliminary quarterly national accounts data as FK=EK, Q1-Q3 2022 / EK, Q1-Q3 2021 where EK, Q1-Q3 2022 being the national accounts expenditure for aggregate K and quarter 1-3 in 2022. The assumption is here that the development from Q4 2021 to Q4 2022 is equal to the development for Q1-Q3. The quarterly national accounts data is available at 4-digit COICOP level. We thus calculated adjustment factors at this level and applied them to our elementary aggregates. We applied such adjustment factors to all product areas in our HICP basket, not only those most heavily hit by the pandemic. There is often more than one elementary aggregate within a 4-digit COICOP and in almost all such cases we applied the adjustment factor proportionally to the included elementary aggregates. Exceptions were flights and package holidays. For flights (COICOP 07.3.3), we used additional data sources for the more detailed breakdown within each 4-digit COICOP. We used airport statistics for full years 2022 and 2021 to refine the estimates for domestic and international flights respectively. For package holidays we used transaction data to adjust the implicit assumption for the fourth quarter of 2022. Except for these areas, we used no other sources than preliminary national accounts data for the adjustment factors. The table below describes the main weight sources used to derive HICP weights during normal circumstances (also before 2020). Table: Weight sources used to derive HICP weights during normal circumstances
*Statistics Sweden currently develops an alternative design for estimating the part of household consumption that was previously derived from the household budget survey. The new approach will primarily rely on new data sources such as scanner and payment card data and is expected to be implemented around 2023-2024. Price updating from full year t-1 to December t-1 is carried out at elementary aggregate level, with the corresponding price index series for each particular aggregate. Exceptions are insurance services where we price update using HICP All items (in line with pp 255-256 in HICP-manual). 18.1.1.1. Compilation at elementary aggregate level The availability and use of detailed weights differ between product categories. For these aggregates, weights on the level of the product or outlet are used (i.e. within the elementary aggregate):
For other product categories than those mentioned above, we tend to use PPS sample, and therefore no explicit weights are used within the elementary aggregate (the number of observation per product/outlet tend to reflect the size component in the PPS, e.g. outlet or product revenue). See 18.1.1 Weights for a table with sources of weights at the elementary aggregates level. No weighting for regions used. Source for outlet weights: Statistics Sweden's business register (turnover) 18.1.1.2. Compilation of sub-index weights The expenditure shares at sub-index level should be derived from data sources for year t-2 and these shares should be updated to make them representative for t-1. How have you applied these principles in the most recent weight update? See the 18.1.1 Weights. Sources for adjustment from t-2 to t-1 For the COVID related adjustment factor from t-2 to t-1 (described in question 1) at the 4-digit COICOP level, we use national accounts quarterly data Q1-Q3 for 2021 and 2022. For the detail breakdown within flights (COICOP 07.3.3), we used airport statistics for full years 2022 and 2021 to refine the estimate for domestic and international flights respectively. For accommodation (COICOP 11.2.0), we used preliminary domestic accommodation statistics from the Swedish Agency for Economic and Regional Growth. We used data up until October 2022. For package holidays we used transaction data to adjust the fourth quarter estimate.
Which main data sources did you use to derive the expenditure shares at sub-index level? Specify the reference period of the data sources. See 18.1.1 Weights for a table with the main sources and each respective reference period.
Since we apply the adjustment factor previously described, the 4th quarter is assumed to have the same development as quarter 1-3 between 2021 and 2022.
Provide details for specific product categories that have the biggest changes when compared with the previous weight derivation exercise. Specify the reference period of the data sources. The broad product categories that changed the most in terms of their relative importance in the basket are the following:
The change is calculated as [Expenditure share 2023] / [Expenditure share 2022] -1. 18.1.1.3. Compilation of sub-index weights The reference period for the national accounts data used to calculate sub-indices weights is t-2. Reference years to get a more detailed distribution of expenditure shares:
18.1.1.4. Weights – plausibility checking Plausibility checking for annual updating of weights at higher level Two parallel calculations of weights are carried out and we make sure they give the same results in the end. Furthermore, we check the following:
Plausibility checking for periodic review of weights at lower levels 18.1.1.5. Price updating Do you apply price-updating between t-2 and t-1 to make the expenditure shares representative for t-1? At the 4-digit COICOP level, we use national accounts data in current prices when calculating the adjustment factor between full year t-2 and full year t-1. At that stage, no further price updating is carried out. For the detailed breakdown within flights and accommodation, we use volume data as a basis for the adjustment factors and therefore we also carried out price updating from t-2 to full year t-1. We did this using the indices for each specific elementary aggregate. Describe your price-updating procedures to December t-1. Price updating from full year t-1 to December t-1 is carried out at elementary aggregate level, with the corresponding price index series for each particular aggregate. At which level is the price-updating applied? Elementary aggregate level (the level below five digit ECOICOP). 18.1.1.6. Compilation of total household final monetary consumption expenditure Which data sources do you use and which adjustments do you make to derive the total country HFMCE for t-1. Describe how the 4th quarter of t-1 is included in the calculations. How did you ensure consistency between the total and the sum of the sub-indexes? We use the same method as for the ITEM weights, namely by multiplying the expenditure of HFMCE with the adjustment factor FK=EK, Q1-Q3 t-1 / EK, Q1-Q3 t-2 . Here K is the total domestic household consumption on goods and services that are within the scope of HICP. The consistency compared to the adjusted aggregate expenditures used for item weights, seems satisfactory. 18.1.2. Prices Restricted from publication18.1.2.1. Data Source - overview Restricted from publication18.1.2.2. Scanner data - general information Restricted from publication18.1.2.3. Web scraping - general information Restricted from publication18.1.3. Sampling 18.1.3.1. Sampling design: locations for survey How the sample is geographically stratified Local price collection (i.e. on-site sampling of specific outlets in Sweden): Geographical stratification is no longer applicable in the sampling design as prices are preferably collected from the Internet (or other data sources). Some few outlets are still surveyed on-site due to certain conditions requiring so. There is no geographical design aspect in such cases. Central price collection: Geographical stratification applies to the survey of monthly condominium fees. Three larger metropolitan areas, 'Stockholm metropolitan area', 'Gothenburg metropolitan area', 'Malmö metropolitan area' are clustered in stratification, and two other clusters consisting of 'Other large municipalities' and 'Other small municipalities' are formed which have no geographical adjacency. 18.1.3.2. Sampling design: outlets Local price collection: The outlet sampling is done through a sequential size-proportional design (PPS, probability proportional to size). The size measure in the PPS sampling defines as a combination of the number of employees (plus one, in order to account for the owner) and total turnover adherable to business unit level (modelled if necessary/missing). The sample is drawn from frame based on the Swedish Business Register which provides a centralised system for coordinating frames and samples (SAMU). Objects that are included in the HICP's local price collection are divided into some 40 strata by industry according to Swedish Standard Industrial Classification (SNI 2007, i.e NACE). Information from previous Household Budget Survey, transaction data and market analysis are accounted for to increase frame relevance. Samples are updated annualy with respect to relevance and to account for market changes. Rotation is employed when necessary, with a target of annual 20% sample updates. Retail chains surveyed through alternative data sources are obtained are not subject to rotation. Outlet weights are computed annually in these processes.
Central price collection: Outlet samples are updated either annually or with three to five year intervals (depending on the weight of the product group and dynamics of the product area). The most common sampling method is cut-off sampling based on a measure of total turnover in a previous year according to the business register.
Nota bene: The sampling design for the Swedish CPI has traditionally divided the survey population into local (field) and central (in-house) surveys based on type of products and respective typical purchase procedures. E.g, food, clothing, hardware are local surveys although data collection methods may vary and be on field or in-house, whereas administrative fees for dental care, services of various kinds etc. are taken as central. The latter may also be due to varying data collection methods but are surveyed/collected mainly centrally (in-house). 18.1.3.3. Sampling design: newly significant goods and services How we identify and introduce new goods and services in the index Newly significant goods and services are identified by staff at the price statistics unit (centrally) in the annual review of product specifications and product groups. The process is supported by information from price collectors, from the industries concerned, and from Eurostat. Household consumption and market shares are considered relevant for introducing new products. New products within an already existing product group, such as specific models of smartphones, computers, printers and tablets are introduced as a new representative item in the course of the year if it replaces an old outgoing model. Broader product categories that constitutes entire product groups/elementary aggregates are brought into CPI once per year. Goods or services introduced the last year
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18.2. Frequency of data collection | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
Price data is collected every month. |
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18.3. Data collection | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
18.3.1. Price collection surveys Survey data is collected by the following means:
18.3.2. Timing of price collection
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18.4. Data validation | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
Data validation is done by National Statistical Institutes; additional quality checks are carried out also by Eurostat. 18.4.1. Data validation - price data A first type of validation check is carried out in connection with the price collection itself. For locally collected products, the price collector receives a warning in the data entry software if the value is illogical or missing. For centrally collected prices that are manually registered, central staff carry out similar checks. The carefulness of such checks depends on the survey’s importance (weight and variance). In the next step, another validation at the micro level is carried out by the central staff at the Section for consumer prices. This step starts when prices for a certain month and product group have been entered into the production system and are shown in the interface. Automatic checks are carried out in the system:
A warning is shown if the system find suspicious values and the central staff can correct the price, write a comment or confirm if the price is ok. The production system stores the history of data editing actions. A generic validation tool, SELEKT, for selective validation has been developed at Statistics Sweden. The system aims to reduce the number of warnings but at the same time discover important errors. For more information about this system, see the article by Anders Norberg (2016), 'SELEKT - A Generic Tool for Selective Editing', Journal of Official Statistics, Vol. 32, No. 1, 2016, pp. 209-229. |
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18.5. Data compilation | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
18.5.1. Elementary price index formulae In general:
The number of decimals that we apply in HICP/HICP-CT for:
18.5.2. Aggregation of different data sources Aggregation steps from bottom to up: 1) Elementary aggregate indices (December previous year=100) are aggregated using Jevons index in most cases with prices from reference period and comparison period (quality adjusted prices where necessary). Exceptions are two EAs where Dutot index is used (municipality services and a sub-aggregate for electricity). 2) Indices (December previous year=100) for each ECOICOP-level are then aggregated using the elementary aggregates directly. This means that the index for HICP total is based directly on elementary aggregates and not on the indices for intermediate ECOICOP groups. These indices (December previous year=100) for all ECOICOP are then used in the chaining. 18.5.3. Chaining, linking and splicing methods The chaining procedure for each respective aggregation level (above elementary aggregate level) within the HICP is to multiply the index for the current month (December y-1=100) with the longer index series (2015=100) for each particular aggregate. No splicing is made (other than chaining the index). Annexes: Chaining method 18.5.4. Quality adjustment – Detailed information The approach used for products in ECOICOP divisions 05, 09 and 12: Supported judgmental quality adjustment. Performed by local price collectors, except for most consumer electronics, where it is performed by staff at the central office. The price collector/central staff indicates the judged value in SEK of the quality difference between the replaced and the replacing model. The price collector often asks the sales person for information, but the price collector is instructed to make an independent judgment from the consumer perspective. For electronic goods, staff in central office make a judgement supported by information from the internet and in a number of cases also supported by hedonic models (coffee machines, TVs, digital cameras, mobile phones, computers and computer accessories). All quality adjustments are validated and approved centrally. Package size adjustment: For changes in quantity (e.g. from 200 g to 400 g), the price is adjusted in proportion to the product quantity change. Commonly used for e.g. food packages as well as pharmaceuticals. Approach used for clothing (garments) and footwear (03.1.2; 03.2): Hedonic regression, adjusting for major product features, is used. Furthermore, an adjustment factor is used to correct for a downward bias occurring when local price collectors tend to choose a lower share of discounted prices in the new sample for reference period December, compared to the share in survey month December. The propensity to choose a lower share of discounted products in the reference period is because a discounted price is a signal to the price collector that the product is likely to only be sold for a short period, thus meaning the product would soon have to be replaced and imply future workload.
Approach used for rental housing (04.1): Staff of the consumer price section make supported judgmental quality adjustments. Detailed information about all quality changes are collected in a phone interview with the property owner, facilitating the adjustment. In addition, option cost lists are utilized that are available on many landlords webpages, e.g. it costs X SEK/month extra to have a dish machine. If this amount is found in the list of more than one landlord, the lowest value is used. Approach used for cars (07.1.1): New cars:
Option pricing is used, from year 2007 in the usual form of adjusting for added or deleted features by 50 percent of their market prices as separate options. Changes in engine power and changes in fuel economy are included as features to adjust for. Used cars: For 2023 the index for new cars is used as a proxy for used cars as an interim solution, since the former data delivery from a market analysis company was discontinued in end of 2022 with short notice.
Direct comparison is used for certain product groups (e.g. curtains, sleeping sheet, bags and saucepan) where the product life cycle was assessed to be long enough and the product description could be narrowly defined. An analysis was carried out to determine which product groups are suitable for this. The method 'link to show no price change' is generally not applied in the Swedish CPI.
18.5.5. Seasonal items We treat the following items as seasonal items, with a method in line with Regulation (EC) 330/2009, repealed and replaced by Commission Implementing Regulation (EU) 1148/2020:
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18.6. Adjustment | ||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||||
Not applicable. |
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No information. |
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