Forecasting with adaptive extended exponential smoothing
Tóm tắt
Much of product level forecasting is based upon time series techniques. However, traditional time series forecasting techniques have offered either smoothing constant adaptability or consideration of various time series components, but not both. The purpose of this paper is to present a time series technique newly developed by the author that combines both the inclusion of leve, trend, and seasonality and smoothing constant adaptability. Testing of this technique, managerial and research implications, and guidelines for use are also presented.
Tài liệu tham khảo
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