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Penalized maximum likelihood estimation of a stochastic multivariate regression model

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  • Hansen, Elizabeth
  • Chan, Kung-Sik

Abstract

We study the large-sample properties of the penalized maximum likelihood estimator of a multivariate stochastic regression model with contemporaneously correlated data. The penalty is in terms of the square norm of some (vector) linear function of the regression coefficients. The model subsumes the so-called common transfer function model useful for extracting common signals in a panel of short time series. We show that, under mild regularity conditions, the penalized maximum likelihood estimator is consistent and asymptotically normal. The asymptotic bias of the regression coefficient estimator is also derived.

Suggested Citation

  • Hansen, Elizabeth & Chan, Kung-Sik, 2010. "Penalized maximum likelihood estimation of a stochastic multivariate regression model," Statistics & Probability Letters, Elsevier, vol. 80(21-22), pages 1643-1649, November.
  • Handle: RePEc:eee:stapro:v:80:y:2010:i:21-22:p:1643-1649
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