
doi: 10.2172/6357640
Current practice uses statistical tests to determine whether seasonal factors should be applied in a given forecasting situation. Research suggests that an optimal policy might lie somewhere between using full seasonal factors and using no seasonal factors on series. This research proposes and tests use of a modified seasonality factor. Modified seasonal factors reduce the emphasis on the seasonal adjustments when forecasts are made. The adjustments account for errors in the estimation of the factors and for possible changes in the factors over the forecast horizon. An analysis of data from US Navy personnel inventories was conducted to test the use of a modified seasonality factor. Modified seasonal factors led to improved accuracy for predictions of inventories by paygrade using quarterly data from the Navy Personnel Research and Development Center (NPRDC). Under certain selections of factors, the mean absolute percent error (MAPE) was reduced by 4.4%. No gain was obtained, however, for the inventories by length of service. It is expected, but not shown here, that the modified seasonal factors will only be of value for series where the estimated seasonal factors show a substantial variation across the year. 3 refs., 6 tabs.
Numerical Solution, Mathematical Models, Statistical Models, And Information Science, Computing, Extrapolation, Seasonal Variations, 99 General And Miscellaneous//Mathematics, Variations 990200* -- Mathematics & Computers, Forecasting
Numerical Solution, Mathematical Models, Statistical Models, And Information Science, Computing, Extrapolation, Seasonal Variations, 99 General And Miscellaneous//Mathematics, Variations 990200* -- Mathematics & Computers, Forecasting
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