Forecasting time series with outliers

Forecasting time series with outliers

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Article ID: iaor19932483
Country: United Kingdom
Volume: 12
Issue: 1
Start Page Number: 13
End Page Number: 35
Publication Date: Jan 1993
Journal: International Journal of Forecasting
Authors: ,
Abstract:

Time-series data are often contaminated with outliers due to the influence of unusual and non-repetitive events. Forecast accuracy in such situations is reduced due to (1) a carry-over effect of the outlier on the point forecast and (2) a bias in the estimates of model parameters. Hillmer and Ledolter studied the effect of additive outliers on forecasts. It was found that forecast intervals are quite sensitive to additive outliers, but that point forecasts are largely unaffected unless the outlier occurs near the forecast origin. In such a situation the carry-over effect of the outlier can be quite substantial. In this study, the authors investigate the issues of forecasting when outliers occur near or at the forecast origin. They propose a strategy which first estimates the model parameters and outlier effects using the procedure of Chen and Liu to reduce the bias in the parameter estimates, and then uses a lower critical value to detect outliers near the forecast origin in the forecasting stage. One aspect of this study is on the carry-over effects of outliers on forecasts. Four types of outliers are considered: innovational outlier, additive outlier, temporary change, and level shift. The effects due to a misidentification of an outlier type are examined. The performance of the outlier detection procedure is studied for cases where outliers are near the end of the series. In such cases, the authors demonstrate that statistical procedures may not be able to effectively determine the outlier types due to insufficient information. Some strategies are recommended to reduce potential difficulties caused by incorrectly detected outlier types. These findings may serve as a justification for forecasting in conjunction with judgement. Two real examples are employed to illustrate the issues discussed.

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