Volume 21 Issue 4 (October-December 2005)

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Nonlinearities, Business Cycles and Forecasting
edited by Antonio Garcia-Ferrer, Jan G. De Gooijer, Pilar Poncela, Esther Ruiz

Detecting nonlinearity in time series by model selection criteria

Pena, D. , Rodriguez, J.
Pages 731-748
Abstract

This article analyzes the use of model selection criteria for detecting nonlinearity in the residuals of a linear model. Model selection criteria are applied for finding the order of the best autoregressive model fitted to the squared residuals of the linear model. If the order selected is not zero, this is considered as an indication of nonlinear behavior. The BIC and AIC criteria are compared to some popular nonlinearity tests in three Monte Carlo experiments. We conclude that the BIC model selection criterion seems to offer a promising tool for detecting nonlinearity in time series. An example is shown to illustrate the performance of the tests considered and the relationship between nonlinearity and structural changes in time series.

Keywords: GARCH , Portmanteau tests , Threshold autoregressive , [msc] Primary; 62M10 , [msc] Secondary; 62M20 , AIC , BIC , Bilinear
FULL TEXT LINK
http://dx.doi.org/10.1016/j.ijforecast.2005.04.014
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