Model selection for infinite variance time series |
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Authors: | R.H. Glendinning |
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Affiliation: | Defence Research Agency , St. Audits road, Malvern, Worcestershire, WR14 3PS, U.K |
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Abstract: | In this we consider the problem of model selection for infinite variance time series. We introduce a group of model selection critera based on a general loss function Ψ. This family includes various generalizations of predictive least square and AIC Parameter estimation is carried out using Ψ. We use two loss functions commonly used in robust estimation and show that certain criteria out perform the conventional approach based on least squares or Yule-Walker estimation for heavy tailed innovations. Our conclusions are based on a comprehensive study of the performance of competing criteria for a wide selection of AR(2) models. We also consider the performance of these techniques when the ‘true’ model is not contained in the family of candidate models. |
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Keywords: | autoregressive process infinite variance |
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