Exponential semiparametric regression models under random censorship∗
نویسنده
چکیده
Using the weighted maximum likelihood method, we propose a consistent estimation of parametric portion and nonparametric portion in exponential semiparametric regression models under random censorship. A small Monte Carlo study is carried out to examine the proposed estimation method.
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