Robust estimation for linear regression with asymmetric errors |
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Authors: | Ana M. Bianco,Marta Garcia Ben,Ví ctor J. Yohai |
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Abstract: | ![]() The authors propose a new class of robust estimators for the parameters of a regression model in which the distribution of the error terms belongs to a class of exponential families including the log‐gamma distribution. These estimates, which are a natural extension of the MM‐estimates for ordinary regression, may combine simultaneously high asymptotic efficiency and a high breakdown point. The authors prove the consistency and derive the asymptotic normal distribution of these estimates. A Monte Carlo study allows them to assess the efficiency and robustness of these estimates for finite samples. |
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Keywords: | Log‐gamma regression M‐estimates robust estimates |
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