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Regularized robust estimation in binary regression models
Authors:Qingguo Tang  Rohana J. Karunamuni  Boxiao Liu
Affiliation:aSchool of Economics and Management, Nanjing University of Science and Technology, Nanjing, People''s Republic of China;bDepartment of Mathematical and Statistical Sciences, University of Alberta, Edmonton, Canada
Abstract:
In this paper, we investigate robust parameter estimation and variable selection for binary regression models with grouped data. We investigate estimation procedures based on the minimum-distance approach. In particular, we employ minimum Hellinger and minimum symmetric chi-squared distances criteria and propose regularized minimum-distance estimators. These estimators appear to possess a certain degree of automatic robustness against model misspecification and/or for potential outliers. We show that the proposed non-penalized and penalized minimum-distance estimators are efficient under the model and simultaneously have excellent robustness properties. We study their asymptotic properties such as consistency, asymptotic normality and oracle properties. Using Monte Carlo studies, we examine the small-sample and robustness properties of the proposed estimators and compare them with traditional likelihood estimators. We also study two real-data applications to illustrate our methods. The numerical studies indicate the satisfactory finite-sample performance of our procedures.
Keywords:Binary regression   maximum likelihood   minimum-distance methods   variable selection   efficiency   robustness
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