Seasonal adjustment
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Seasonal adjustment or deseasonalization is a
statistical Statistics (from German: '' Statistik'', "description of a state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a scientific, industr ...
method for removing the seasonal component of a
time series In mathematics, a time series is a series of data points indexed (or listed or graphed) in time order. Most commonly, a time series is a sequence taken at successive equally spaced points in time. Thus it is a sequence of discrete-time data. Ex ...
. It is usually done when wanting to analyse the trend, and cyclical deviations from trend, of a time series independently of the seasonal components. Many economic phenomena have seasonal cycles, such as agricultural production, (crop yields fluctuate with the seasons) and consumer consumption (increased personal spending leading up to
Christmas Christmas is an annual festival commemorating the birth of Jesus Christ, observed primarily on December 25 as a religious and cultural celebration among billions of people around the world. A feast central to the Christian liturgical year ...
). It is necessary to adjust for this component in order to understand underlying trends in the economy, so
official statistics Official statistics are statistics published by government agencies or other public bodies such as international organizations as a public good. They provide quantitative or qualitative information on all major areas of citizens' lives, such as ...
are often adjusted to remove seasonal components. Typically, seasonally adjusted data is reported for unemployment rates to reveal the underlying trends and cycles in labor markets.


Time series components

The investigation of many economic time series becomes problematic due to seasonal fluctuations. Time series are made up of four components: *S_t: The seasonal component *T_t: The trend component *C_t: The
cyclical Cycle, cycles, or cyclic may refer to: Anthropology and social sciences * Cyclic history, a theory of history * Cyclical theory, a theory of American political history associated with Arthur Schlesinger, Sr. * Social cycle, various cycles in soc ...
component *E_t: The
error An error (from the Latin ''error'', meaning "wandering") is an action which is inaccurate or incorrect. In some usages, an error is synonymous with a mistake. The etymology derives from the Latin term 'errare', meaning 'to stray'. In statistics ...
, or irregular component. The difference between seasonal and cyclic patterns: *Seasonal patterns have a fixed and known length, while cyclic patterns have variable and unknown length. *Cyclic pattern exists when data exhibit rises and falls that are not of fixed period (duration usually of at least 2 years). *The average length of a cycle is usually longer than that of seasonality. *The magnitude of cyclic variation is usually more variable than that of seasonal variation. The relation between decomposition of time series components *Additive decomposition: Y_t = S_t + T_t + C_t + E_t, where Y_t is the data at time t. *Multiplicative decomposition: Y_t = S_t \cdot T_t \cdot C_t \cdot E_t. *Logs turn multiplicative relationship into an additive relationship: Y_t = S_t \cdot T_t \cdot C_t \cdot E_t \Rightarrow \log Y_t = \log S_t + \log T_t + \log C_t + \log E_t: *An
additive model In statistics, an additive model (AM) is a nonparametric regression method. It was suggested by Jerome H. Friedman and Werner Stuetzle (1981) and is an essential part of the ACE algorithm. The ''AM'' uses a one-dimensional smoother to build a res ...
is appropriate if the magnitude of seasonal fluctuations does not vary with level. *If seasonal fluctuations are proportional to the level of the series, then a multiplicative model is appropriate. Multiplicative decomposition is more prevalent with economic series.


Seasonal adjustment

Unlike the trend and cyclical components, seasonal components, theoretically, happen with similar magnitude during the same time period each year. The seasonal components of a series are sometimes considered to be uninteresting and to hinder the interpretation of a series. Removing the seasonal component directs focus on other components and will allow better analysis. Different statistical research groups have developed different methods of seasonal adjustment, for example X-13-ARIMA and
X-12-ARIMA X-13ARIMA-SEATS, successor to X-12-ARIMA and X-11, is a set of statistical methods for seasonal adjustment and other descriptive analysis of time series data that are implemented in the U.S. Census Bureau's software package. These methods are or ...
developed by the
United States Census Bureau The United States Census Bureau (USCB), officially the Bureau of the Census, is a principal agency of the U.S. Federal Statistical System, responsible for producing data about the American people and economy. The Census Bureau is part of th ...
; TRAMO/SEATS developed by the
Bank of Spain The Bank of Spain ( es, link=no, Banco de España) is the central bank of Spain. Established in Madrid in 1782 by Charles III, today the bank is a member of the European System of Central Banks and is also Spain's national competent authority fo ...
; MoveReg (for weekly data) developed by the United States
Bureau of Labor Statistics The Bureau of Labor Statistics (BLS) is a unit of the United States Department of Labor. It is the principal fact-finding agency for the U.S. government in the broad field of labor economics and statistics and serves as a principal agency of ...
; STAMP developed by a group led by S. J. Koopman; and “Seasonal and Trend decomposition using Loess” (STL) developed by Cleveland et al. (1990). While X-12/13-ARIMA can only be applied to monthly or quarterly data, STL decomposition can be used on data with any type of seasonality. Furthermore, unlike X-12-ARIMA, STL allows the user to control the degree of smoothness of the trend cycle and how much the seasonal component changes over time. X-12-ARIMA can handle both additive and multiplicative decomposition whereas STL can only be used for additive decomposition. In order to achieve a multiplicative decomposition using STL, the user can take the log of the data before decomposing, and then back-transform after the decomposition.


Software

Each group provides software supporting their methods. Some versions are also included as parts of larger products, and some are commercially available. For example, SAS includes X-12-ARIMA, while Oxmetrics includes STAMP. A recent move by public organisations to harmonise seasonal adjustment practices has resulted in the development of Demetra+ by
Eurostat Eurostat ('European Statistical Office'; DG ESTAT) is a Directorate-General of the European Commission located in the Kirchberg, Luxembourg, Kirchberg quarter of Luxembourg City, Luxembourg. Eurostat's main responsibilities are to provide stati ...
and
National Bank of Belgium The National Bank of Belgium (NBB; nl, Nationale Bank van België, french: Banque nationale de Belgique, german: Belgische Nationalbank) has been the central bank of Belgium since 1850. The National Bank of Belgium was established with 100% p ...
which currently includes both X-12-ARIMA and TRAMO/SEATS. R includes STL decomposition. The X-12-ARIMA method can be utilized via the R package "X12".
EViews EViews is a statistical package for Windows, used mainly for time-series oriented econometric analysis. It is developed by Quantitative Micro Software (QMS), now a part of IHS. Version 1.0 was released in March 1994, and replaced MicroTSP. T ...
supports X-12, X-13, Tramo/Seats, STL and MoveReg.


Example

One well-known example is the rate of
unemployment Unemployment, according to the OECD (Organisation for Economic Co-operation and Development), is people above a specified age (usually 15) not being in paid employment or self-employment but currently available for work during the refe ...
, which is represented by a time series. This rate depends particularly on seasonal influences, which is why it is important to free the unemployment rate of its seasonal component. Such seasonal influences can be due to school graduates or dropouts looking to enter into the workforce and regular fluctuations during holiday periods. Once the seasonal influence is removed from this time series, the unemployment rate data can be meaningfully compared across different months and predictions for the future can be made. When seasonal adjustment is not performed with monthly data, year-on-year changes are utilised in an attempt to avoid contamination with seasonality.


Indirect seasonal adjustment

When time series data has seasonality removed from it, it is said to be ''directly seasonally adjusted''. If it is made up of a sum or index aggregation of time series which have been seasonally adjusted, it is said to have been ''indirectly seasonally adjusted''. Indirect seasonal adjustment is used for large components of GDP which are made up of many industries, which may have different seasonal patterns and which are therefore analyzed and seasonally adjusted separately. Indirect seasonal adjustment also has the advantage that the aggregate series is the exact sum of the component series. Seasonality can appear in an indirectly adjusted series; this is sometimes called ''residual seasonality''.


Moves to standardise seasonal adjustment processes

Due to the various seasonal adjustment practices by different institutions, a group was created by Eurostat and the
European Central Bank The European Central Bank (ECB) is the prime component of the monetary Eurosystem and the European System of Central Banks (ESCB) as well as one of seven institutions of the European Union. It is one of the world's most important centra ...
to promote standard processes. In 2009 a small group composed of experts from
European Union The European Union (EU) is a supranational union, supranational political union, political and economic union of Member state of the European Union, member states that are located primarily in Europe, Europe. The union has a total area of ...
statistical institutions and central banks produced the ESS Guidelines on Seasonal Adjustment, which is being implemented in all the European Union statistical institutions. It is also being adopted voluntarily by other public statistical institutions outside the European Union.


Use of seasonally adjusted data in regressions

By the Frisch–Waugh–Lovell theorem it does not matter whether dummy variables for all but one of the seasons are introduced into the regression equation, or if the independent variable is first seasonally adjusted (by the same dummy variable method), and the regression then run. Since seasonal adjustment introduces a "non-revertible" moving average (MA) component into time series data,
unit root In probability theory and statistics, a unit root is a feature of some stochastic processes (such as random walks) that can cause problems in statistical inference involving time series models. A linear stochastic process has a unit root if 1 is ...
tests (such as the
Phillips–Perron test In statistics, the Phillips–Perron test (named after Peter C. B. Phillips and Pierre Perron) is a unit root test. That is, it is used in time series analysis to test the null hypothesis that a time series is integrated of order 1. It builds ...
) will be biased towards non-rejection of the unit root
null Null may refer to: Science, technology, and mathematics Computing * Null (SQL) (or NULL), a special marker and keyword in SQL indicating that something has no value * Null character, the zero-valued ASCII character, also designated by , often use ...
.


Shortcomings of using seasonally adjusted data

Use of seasonally adjusted time series data can be misleading because a seasonally adjusted series contains both the trend- cycle component and the
error An error (from the Latin ''error'', meaning "wandering") is an action which is inaccurate or incorrect. In some usages, an error is synonymous with a mistake. The etymology derives from the Latin term 'errare', meaning 'to stray'. In statistics ...
component. As such, what appear to be "downturns" or "upturns" may actually be randomness in the data. For this reason, if the purpose is finding turning points in a series, using the trend-cycle component is recommended rather than the seasonally adjusted data.


See also

* Ergograph *
List of statistical packages Statistical software are specialized computer programs for analysis in statistics and econometrics. Open-source * ADaMSoft – a generalized statistical software with data mining algorithms and methods for data management * ADMB – a softwar ...
* Seasonally adjusted annual rate *
Seasonal year The seasonal year is the time between successive recurrences of a seasonal event such as the flooding of a river, the migration of a species of bird, or the flowering of a species of plant. The need for farmers to predict seasonal events led to th ...


References


Further reading

* * * *


External links


Download Demetra+
from circa.europa.eu
Seasonal adjustment
at CROS portal (www.cros-portal.eu)
ESS Guidelines on Seasonal Adjustment
{{Statistics, analysis Seasonality Time series