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Testing seasonal adjustment with Demetra+

Testing seasonal adjustment with Demetra+. Zavadskaya Oksana The National Statistical Committee , Republic of Belarus. Check the original time series.

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Testing seasonal adjustment with Demetra+

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  1. Testing seasonal adjustment with Demetra+ Zavadskaya Oksana The National Statistical Committee, Republic of Belarus

  2. Check the original time series In this report, was carried the adjustment of volume indices of gross domestic product (GDP), calculated to the average quarter of 2005 in 2005 prices

  3. Graphs showing the presence of seasonality In the original time series a seasonal factor is present

  4. The choice of approach and regressors The approach TRAMO/SEATS was used Pre-defined holidays and national holidays were used Our own specification was used : - Transformation, Function : AUTO - Calendar effect, Operating days, Type : Calendar, Belarus - Details, Operating days: td2 - The Easter effect, Options: Pretest - Modeling ARIMA, Automatic modeling, Enabled : True

  5. The applied models Pre-treatment: The estimated period: [I-2005 : IV-2010]Logarithmically transformed seriesThe effects of operating days (2 variables)No effects of EasterDeviating values not foundDecomposition:Trending: innovation dispersion = 0,3802 Seasonal: innovation dispersion= 0,0000 Irregular: innovation dispersion = 0,1441 Used model type: ARIMA (0,1,1)(0,1,1) October 2011

  6. Graph of results Seasonal component in the irregular component is not lost

  7. Check on a sliding seasonal factor Graph of the ratio of seasonality and irregularity in III and IV quarters

  8. The main diagnostic quality Final diagnosis: in general, the results are good, there are the unstable spectral calendar peaks in the residuals of regarima Октябрь 2011

  9. Residual seasonal factor There are no indications of residual seasonal and calendar effects, in time series adjusted on seasonal fluctuations Октябрь 2011

  10. Stability of the model Visual assessment of series allows you to conclude that the model is stable October 2011

  11. Analysis of the residuals Residuals analyzed on randomness, normality and independence October 2011

  12. Questions What’s the meaning of «Friedman statistic = -12666373951979500,0000» in nonparametric tests for seasonal fluctuations in the Friedman test (Friedman test) How to interpret the absence of Autoregressive spectral graph in residuals :

  13. Questions (continuance) 3. The program did not perform an assessment of nonlinearity. Why? Analysis of the residuals 4. How to interpret the straight line on the S-I ratio graph? October 2011

  14. Questions (continuance) 5. How to explain the "zero" in the test for autocorrelation? Should we consider this as a problem? October 2011

  15. Problems 1. Lack of Russian interface 2. Lack of detailed user's manual of the program in Russian 3. Lack of detailed step by step instructions for novice on decoding results

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