The effects of model parameter deviations on the variance of a linearly filtered time series

The effects of model parameter deviations on the variance of a linearly filtered time series

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Article ID: iaor20105267
Volume: 57
Issue: 5
Start Page Number: 460
End Page Number: 471
Publication Date: Aug 2010
Journal: Naval Research Logistics
Authors: ,
Abstract:

We consider a general linear filtering operation on an autoregressive moving average (ARMA) time series. The variance of the filter output, which is an important quantity in many applications, is not known with certainty because it depends on the true ARMA parameters. We derive an expression for the sensitivity (i.e., the partial derivative) of the output variance with respect to deviations in the model parameters. The results provide insight into the robustness of many common statistical methods that are based on linear filtering and also yield approximate confidence intervals for the output variance. We discuss applications to time series forecasting, statistical process control, and automatic feedback control of industrial processes.

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