Acta mathematica scientia,Series B

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VARIABLE SELECTION BY PSEUDO WAVELETS IN HETEROSCEDASTIC REGRESSION MODELS INVOLVING TIME SERIES

Wang Qinghe; Zhou Yong   

  1. Institute of Applied Mathematics, Academy of Mathematics and Systems Science, The Chinese Academy of Sciences, Beijing 100080, China
  • Received:2004-06-21 Revised:2005-07-10 Online:2006-07-20 Published:2006-07-20
  • Contact: Zhou Yong

Abstract:

A simple but efficient method has been proposed to select variables in
heteroscedastic regression models. It is shown that the pseudo empirical
wavelet coefficients corresponding to the significant explanatory variables
in the regression models are clearly larger than those nonsignificant ones,
on the basis of which a procedure is developed to select variables in regression models. The coefficients of the models are also estimated. All estimators are proved to be consistent.

Key words: Heteroscedastic regression models, variable selection, wavelets

CLC Number: 

  • 62G05
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