Forecasting non-seasonal time series with missing observations

Forecasting non-seasonal time series with missing observations

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Article ID: iaor1988421
Country: United Kingdom
Volume: 8
Issue: 2
Start Page Number: 97
End Page Number: 116
Publication Date: Apr 1989
Journal: International Journal of Forecasting
Authors: ,
Abstract:

Most forecasting methods are based on equally spaced data. In the case of missing observations the methods have to be modified. The authors have considered three smoothing methods: namely, simple exponential smoothing; double exponential smoothing; and Holt’s method. They present a new, unified approach to handle missing data within the smoothing methods. This approach is compared with previously suggested modifications. The comparison is done on 12 real, non-seasonal time series, and shows that the smoothing methods, properly modified, usually perform well if the time series have a moderate number of missing observations.

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