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Nonparametric Estimation of the Multivariate Distribution Function in a Censored Regression Model with Applications

机译:应用应用中删除回归模型中多变量分布函数的非参数估计

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摘要

In a regression model with univariate censored responses, a new estimator of the joint distribution function of the covariates and response is proposed, under the assumption that the response and the censoring variable are independent conditionally to the covariates. This estimator is based on the conditional Kaplan-Meier estimator of Beran (1981), and happens to be an extension of the multivariate empirical distribution function used in the uncensored case. We derive asymptotic i.i.d. representations for the integrals with respect to the measure defined by this estimated distribution function. These representations hold even in the case where the covariates are multidimensional under some additional assumption on the censoring. Applications to censored regression and to density estimation are considered.
机译:在具有单变量缩短的回复的回归模型中,提出了协调因子的联合分布函数的新估算,并在响应和审查变量对协变者有条件独立于协变量的情况下提出了协变量和响应的新估算。该估算器基于Beran(1981)的条件Kaplan-Meier估计,并且恰好是未经审查案例中使用的多变量实证分布函数的扩展。我们派生渐近i.i.d.对于由该估计分布函数定义的测量的积分表示的表示。即使在审查对审查的一些额外假设下协变量是多维数据的情况下,这些陈述仍然存在。考虑了缩回回归和密度估计的应用。

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