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Polynomial Regression with Censored Data based on Preliminary Nonparametric Estimation

机译:基于初步非参数估计的带删失数据的多项式回归

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摘要

Consider the polynomial regression model $Y = beta_0 + beta_1 X + cdots + beta_p X^p + sigma(X) epsilon$ , where σ2(X)=Var(Y|X) is unknown, and ε is independent of X and has zero mean. Suppose that Y is subject to random right censoring. A new estimation procedure for the parameters β0,...,β p is proposed, which extends the classical least squares procedure to censored data. The proposed method is inspired by the method of Buckley and James (1979, Biometrika, 66, 429–436), but is, unlike the latter method, a noniterative procedure due to nonparametric preliminary estimation of the conditional regression function. The asymptotic normality of the estimators is established. Simulations are carried out for both methods and they show that the proposed estimators have usually smaller variance and smaller mean squared error than the Buckley–James estimators. The two estimation procedures are also applied to a medical and an astronomical data set.
机译:考虑多项式回归模型$ Y = beta_0 + beta_1 X + cdots + beta_p X ^ p + sigma(X)epsilon $,其中σ2(X)= Var(Y | X)是未知的,而ε是独立的X且均值为零。假设Y受随机权利检查。提出了一种针对参数β0,...,βp 的新估计方法,将经典的最小二乘方法扩展到被检数据。所提出的方法受Buckley和James(1979,Biometrika,66,429–436)方法的启发,但与后一种方法不同,由于条件回归函数的非参数初步估计,该方法是非迭代过程。估计量的渐近正态性成立。对这两种方法都进行了仿真,结果表明,与Buckley-James估计量相比,拟议的估计量通常具有较小的方差和较小的均方误差。这两种估计程序也适用于医学和天文数据集。

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