Elliptical regression models for multivariate sample-selection bias correction

In linear regression, a multivariate sample-selection scheme often applies to the dependent variable, which results in missing observations on the variable. This induces the sample-selection bias, i.e. a standard regression analysis using only the selected cases leads to biased results. To solve the...

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Bibliographic Details
Published inJournal of the Korean Statistical Society Vol. 45; no. 3; pp. 422 - 438
Main Authors Kim, Hea-Jung, Kim, Hyoung-Moon
Format Journal Article
LanguageEnglish
Published Singapore Elsevier B.V 01.09.2016
Springer Singapore
한국통계학회
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ISSN1226-3192
2005-2863
DOI10.1016/j.jkss.2016.01.003

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Summary:In linear regression, a multivariate sample-selection scheme often applies to the dependent variable, which results in missing observations on the variable. This induces the sample-selection bias, i.e. a standard regression analysis using only the selected cases leads to biased results. To solve the bias problem, in this paper, we propose a class of multivariate selection regression models by extending classic Heckman model to allow for multivariate sample-selection scheme and robustness against departures from normality. Necessary theories for building a formal bias correction procedure, based upon the proposed model, are obtained, and an efficient estimation method for the model is provided. Simulation results and a real data example are presented to demonstrate the performance of the estimation method and practical usefulness of the multivariate sample-selection models.
Bibliography:G704-000337.2016.45.3.009
ISSN:1226-3192
2005-2863
DOI:10.1016/j.jkss.2016.01.003