united nations statistics division seasonal adjustment training workshop on the compilation of...
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United Nations Statistics Division
Seasonal adjustment
Training Workshop on the Compilation of Quarterly National Accounts for Economic Cooperation Organization Member Countries
8-11 March 2015Tehran, Islamic Republic of Iran
Outline
What is time series?Components of time seriesWhat is seasonal adjustment? Seasonal adjustment models Seasonal adjustment methods Issues in seasonal adjustment Conclusions Questions
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What is time series?
Is a series of data obtained through repeated measurement of the same concept over time that allows different periods to be compared
Examples:• QNA• Monthly index of industrial production• Monthly consumer price index• Monthly retail sales
Data which are collected only once or irregularly are not considered as time series
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What is time series?
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Example of time series data
Source: IMF QNA Manual (2001)
Components of time series
Captures long-term trend and business cycle movements in the data• Long-trend trend is associated with structural changes
Population growth Progress in technology and productivity
• Business cycle movements are related to periodic oscillations of different phases of the economy
Recession Recovery Growth Decline
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Trend cycle component
Components of time series
Stable seasonal effects in terms of annual timing, direction and magnitude• Could be due to climatic factors, administrative or
legal rules, social/cultural traditions and conventions, and calendar effects that are stable in annual timing
Example: Public holidays such as Christmas
Calendar-related systematic effects that are not stable in annual timing, and due to • Trading-day or working-day effect• Moving holiday effect, for example, Ramadan,
Chinese New Year• Leap year effect
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Seasonal component
Components of time series
Captures effects that are unpredictable in terms of timing, impact and duration unless additional information is available
Includes outlier effects which cause abrupt changes in the series, sometimes related to unexpected events such as• Unseasonable weather• Natural disasters• Strikes• Economic and financial crisis
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Irregular component
What is seasonal adjustment?
Seasonal adjustment means using analytical techniques to break down a series into its components
The purpose is to identify the different components of the time series and thus provide a better understanding of the behaviour of the series to• Aid in short-term forecasting and modelling• Remove regular within-a-year seasonal patterns to
highlight the underlying trends and short-run movements in the series
• Allow series to be compared from quarter to quarter
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Seasonal adjustment models
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Most common forms of decomposition• Additive: Yt = Tt + St + It• Multiplicative: Yt = Tt x St x It
whereYt = Observed time series at time tTt = Trend-cycle component at time tSt = Seasonal component at time tIt = Irregular component at time t
Seasonal adjustment models
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Additive model assumptions• The components of the series are independent of
each other• The size of the seasonal oscillations is independent of
the level of the series Multiplicative model assumptions
• The components of the series are dependent on each other
• The size of the seasonal oscillations increases and decreases with the level of the series
Seasonal adjustment methods
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Moving average-based methods Model-based methods Integrated methods
Seasonal adjustment methods
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Are based on the use of different kinds of moving average filter
Best example is the X-11 family• US Bureau of Census developed X-11 in the 1960s• Statistics Canada developed X-11-ARIMA • US Bureau of Censes developed X-12-ARIMA in the 1980s
All X-11 family involve repeated application of suitable moving average filters to decompose the time series into its trend-cycle, seasonal and irregular components
Moving average-based methods
Seasonal adjustment methods
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Main steps of X-12-ARIMA program:• The series is pre-adjusted using the regARIMA model
to detect and remove outliers and other distorting effects such as calendar effects and to extend the series with backcasts and forecasts to be used in the decomposition process
• The pre-adjusted series is then decomposed through three rounds of seasonal filtering and extreme value adjustments to produce the trend-cycle, seasonal and irregular components
• Various diagnostics and quality control statistics are computed, tabulated and graphed
Moving average-based methods
Seasonal adjustment methods
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Moving average-based methodsMain elements of X-12-ARIMA seasonal adjustment program
Seasonal adjustment methods
Estimate the trend-cycle, seasonal and irregular components with signal extraction techniques applied to an ARIMA model fitted to the unadjusted data
TRAMO/SEATS is most widely used• Developed at the Bank of Spain• Consists of two main programs
Time series regression with ARIMA noise, missing observations and outliers (TRAMO), a regARIMA modeling package with automatic identification of ARIMA models, outliers and other components
Signal extraction in ARIMA time series (SEATS), which takes modeling results from TRAMO and performs a model-based signal extraction
• Both programs are structured to be used together TRAMO pre-adjusts the series before seasonal adjustment by
SEATS 15
Model-based methods
Seasonal adjustment methods
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Integrated methods
X-13-ARIMA-SEATS• Was recently released by US Bureau of Census• Implements the X-11 method and SEATS method• Allows comparison of X-11 and SEATS seasonal
adjustment using a common set of diagnostics DEMETRA+
• Was developed by Eurostat• Offers choice of X-12-ARIMA and TRAMO/SEATS• Provides user-friendly tools to check quality of results• Allows multi-processing
Seasonal adjustment methods
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Example of seasonally adjusted series, trend-cycle and irregular components
Source: IMF QNA Manual (2001)
Issues in seasonal adjustment
Direct vs indirect seasonal adjustment Relationship among price, volume and value Temporal consistency with annual accounts Length of series for seasonal adjustment Seasonal adjustment of indicators or QNA series Organizing seasonal adjustment in the QNA Presentation of seasonally-adjusted estimates
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Issues in seasonal adjustment
Seasonally adjusted series of aggregates can be derived by• Directly adjusting the aggregates, or• Indirectly by aggregating seasonally adjusted data of the
components Both approaches have merits Direct approach
• May result in improved quality of seasonally adjusted series
• May give best results if the component series show similar seasonal patterns and trend cycles are highly correlated
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Direct vs indirect seasonal adjustment
Issues in seasonal adjustment
Indirect approach• May give best results when the component series show
different seasonal patterns• May make it easier to identify breaks, outliers, calendar
effects, etc, in detailed series• May give better results for balancing items (for example,
value added) if component series are available• May, however, leave residual seasonality in the aggregates
Country practices vary Choice may be guided by expected uses of the
seasonally adjusted data
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Direct vs indirect seasonal adjustment
Issues in seasonal adjustment
Seasonally adjusted price indices, volume measures and current price data can be derived • Independently, or• By seasonally adjusting 2 of them and deriving the
third residually Either approach will give different results Choosing which series to derive residually should
be determined on a case-by-case basis, depending on which approach produces the most reasonable results
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Relationship among price, volume and value
Issues in seasonal adjustment
Annual totals based on seasonally adjusted data and unadjusted data will not be automatically equal due mainly to calendar effects and moving seasonality
If effects are strong, seasonally adjusted data should be benchmarked to the calendar adjusted annual data
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Temporal consistency with annual accounts
Issues in seasonal adjustment
Seasonal adjustment requires sufficiently long time series to ensure results with sufficient quality
For QNA variables, at least 5 years (20 quarters) of data should be used
When starting a new QNA system, unadjusted data should be reconstructed as far back as possible before doing seasonal adjustment
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Length of series for seasonal adjustment
Issues in seasonal adjustment
Sometimes, seasonal adjustment may return questionable results for very long time series• Reasons
Discontinuities and structural breaks due to different economic conditions over a long period of time
• Solution Divide the series into 2 or more contiguous relatively
stable periods Apply seasonal adjustment to each sub-period separately Link the resulting seasonally-adjusted series
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Length of series for seasonal adjustment
Issues in seasonal adjustment
Seasonally adjusted QNA can be obtained by• Using seasonally adjusted indicators, or• Applying the chosen seasonal adjustment method to the
unadjusted QNA Both approaches have merits Applying seasonal adjustment directly to indicators
• Means correcting seasonal effects at the actual data sources
• May avoid artificial seasonality due to use of QNA techniques such as benchmarking
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Seasonal adjustment of indicators or QNA series
Issues in seasonal adjustment
Seasonally adjusting the QNA• Has the advantage of ensuring the unadjusted QNA is
consistent with other variables• Ensures high degree of consistency in the seasonality of
production, expenditure and income components of GDP
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Seasonal adjustment of indicators or QNA series
Issues in seasonal adjustment
Seasonal adjustment programs offer automatic selection procedures that produce satisfactory results for most time series, with little intervention from users
Some series may be problematic with substantial experience and expertise is needed to check whether seasonal adjustment is done properly or fine tune options
General recommendation is for statisticians who compile the statistics to seasonally adjust the series, either solely or together with specialists
A small unit of seasonal adjustment experts should also be set up to handle problematic series
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Organizing seasonal adjustment in the QNA
Issues in seasonal adjustment
Seasonally-adjusted QNA estimates can be used to calculate• Quarter-to-quarter rates of change• Annualized quarterly rates of change
Whatever growth rates that are published should be clearly indicated
The levels of seasonally-adjusted QNA estimates can be annualized• Not recommended as presentation
Seems artificial Is not easy to interpret
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Presentation of seasonally-adjusted estimates
Seasonally adjusted QNA estimates should be calculated to facilitate the analysis of current economic developments without the influence of seasonal and calendar effects
Seasonally adjusted data should, however, not replace the unadjusted QNA data
There are a number of methods to do seasonal adjustment
The choice of which seasonal adjustment method to use can be based on past experience, subjective appreciation and characteristics of the time series
A minimum of 5 years (20 quarters) data is needed to seasonally adjust QNA data.
Metadata and methodological notes on seasonal adjustment methods should be made available for transparency
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Conclusions
Is your country compiling and publishing seasonally-adjusted QNA? • If yes, what method and software are you using to do
seasonal adjustment?• If not, do you have plans to do so?
Is there a specific unit doing seasonal adjustment or is it done by the unit compiling QNA?
Is the method to do seasonal adjustment published in your national accounts methodological notes?
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Questions
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Thank you
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