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Statistical offices often have monopoly to analyze detailed data sets
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səhifə | 11/15 | tarix | 06.03.2018 | ölçüsü | 521 b. | | #44921 |
| Statistical offices often have monopoly to analyze detailed data sets - We should not forecast, but draw attention to statistics
- Identify changes early, leading indicators, develop more flash estimates -> quality vs. timeliness
Otherwise, a risk of marginalisation of NSOs
Economic Crises – Conclusions Some limits of official statistics were highlighted by the critics: - lack of comparability among countries
- need for more timely key indicators
- need for statistical indicators in areas of particular importance for the financial and economic crisis
Turning Points Trend vs. Year-on-Year Rate Volume of Construction
Why Seasonally Adjust? Seasonal effects in raw data conceal the true underlying development - Easier to interpret, reveals long-term development
To aid in comparing economic development - Including comparison of countries or economic activities
To aid economists in short-term forecasting To allow series to be compared from one month to the next - Faster and easier detection of economic cycles
Why Original Data is Not Enough? Comparison with the same period of last year does not remove moving holidays - If Easter falls in March (usually April) the level of activity can vary greatly for that month
Comparison ignores trading day effects, e.g. different amount of different weekdays Contains the influence of the irregular component Delay in identification of turning points
Seasonal Adjustment Seasonal adjustment is an analysis technique that: - Estimates seasonal influences using procedures and filters
- Removes systematic and calendar-related influences
Aims to eliminate seasonal and working day effects - No seasonal and working day effects in a perfectly seasonally adjusted series
Interpretation of Seasonally Adjusted Data In a seasonally adjusted world: - Temperature is exactly the same during both summer and winter
- There are no holidays
- People work every day of the week with the same intensity
Source: Bundesbank
Filter Based Methods X-11, X-11-ARIMA, X-12-ARIMA (STL, SABL, SEASABS) Based on the “ratio to moving average” described in 1931 by Fredrick R. Macaulay (US) Estimate time series components (trend and seasonal factors) by application of a set of filters (moving averages) to the original series Filter removes or reduces the strength of business and seasonal cycles and noise from the input data
X-11 and X-11-ARIMA X-11 Developed by the US Census Bureau Began operation in the US in 1965 Integrated into software such as SAS and STATISTICA Uses filters to seasonally adjust data X-11-ARIMA Developed by Statistics Canada in 1980 ARIMA modelling reduces revisions in the seasonally adjusted series and the effect of the end-point problem No user-defined regressors, not robust against outliers
X-12-ARIMA http://www.census.gov/srd/www/x12a/ Developed and maintained by the US Census Bureau Based on a set of linear filters (moving averages) User may define prior adjustments Fits a regARIMA model to the series in order to detect and adjust for outliers and other distorting effects Diagnostics of the quality and stability of the adjustments Ability to process many series at once Pseudo-additive and multiplicative decomposition X-12-Graph generates graphical diagnostics
X-12-ARIMA
Model Based Methods TRAMO/SEATS, STAMP, ”X-13-ARIMA/SEATS” Stipulate a model for the data (V. Gómes and A. Maravall) Models separately the trend, seasonal and irregular components of the time series Components may be modelled directly or modelling by decomposing other components from the original series Tailor the filter weights based on the nature of the series
TRAMO/SEATS www.bde.es By Victor Gómez & Agustin Maravall, Bank of Spain Both for in-depth analysis of a few series or for routine applications to a large number of series TRAMO preadjusts, SEATS adjusts Fully model-based method for forecasting Powerful tool for detailed analyses of series Only proposes additive/log-additive decomposition
DEMETRA software http://circa.europa.eu/irc/dsis/eurosam/info/data/demetra.htm
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