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Sequential Analysis of Nonparametric Heteroscedastic Regression with Missing Responses

机译:缺少响应的非参数异方差回归的顺序分析

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Regression for data with randomly missed responses is a well-known and complicated statistical problem. This article, for the first time in the literature, explores the asymptotic theory of sharp minimax sequential estimation of a regression function for two classical settings. The former is when the design of predictors is random and an expected stopping time (or its moment) is bounded, and the latter is when the sample size is fixed and predictors can be chosen sequentially to attenuate effects of heteroscedasticity and missing responses. For the former setting it is shown that sequential estimation cannot outperform a design with a fixed sample size. This conclusion expands the famous single-parameter result of Anscombe (1952) upon nonparametric regression (infinite-dimensional parameter) with missing data. For the latter setting a sequential design of predictors is proposed that allows the statistician to match performance of a sharp minimax oracle-estimator that knows all nuisance functions and parameters, including the scale function, the conditional probability of missing the response given the predictor, and smoothness of estimated regression. A numerical study is presented.
机译:具有随机丢失的响应的数据的回归是一个众所周知的复杂统计问题。本文是文献中的第一次,探讨了两种经典背景下回归函数的尖锐极小极大顺序估计的渐近理论。前者是预测变量的设计是随机的,预期的停止时间(或其矩)是有界的,后者是样本量固定并且可以顺序选择预​​测变量以减弱异方差和缺失响应的影响时。对于前一种设置,它表明顺序估计不能胜过具有固定样本大小的设计。该结论扩展了Anscombe(1952)著名的单参数结果,该结果基于缺少数据的非参数回归(无限维参数)。对于后一种设置,提出了预测器的顺序设计,使统计学家可以匹配敏锐的minimax oracle估计器的性能,该估计器知道所有讨厌的函数和参数,包括比例函数,缺少给定预测器的响应的条件概率,以及估计回归的平滑度。提出了数值研究。

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