关于未删减和删减观测数据的聚合

IF 0.8 Q3 STATISTICS & PROBABILITY Mathematical Methods of Statistics Pub Date : 2024-07-15 DOI:10.3103/s1066530724700078
Sam Efromovich
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引用次数: 0

摘要

摘要 在生存分析中,随机右删减将数据分为未删减和已删减的相关生命期观测值。在非参数估计中,未删减观测值占主导地位是一种熟悉的方法,其动机是经典的 Kaplan-Meier 乘积限值和 Cox 部分似然估计器。然而,对于高删失率,我们有兴趣了解,在密度和回归估计等主要非参数问题上,通过汇总未删失和删失观测值,可以做些什么(如果有的话)。知道剔除寿命分布的神谕者可以使用每个子样本进行一致的估计,因此可能会对聚合有所启发。oracle的渐近理论显示,基于删减观测值的密度估计是一个风险收敛速度较慢的问题,这种问题发生在频率域,其严重程度随频率的增加而增加,因此在低频率上进行特殊的聚合可能是有益的。另一方面,对于非参数回归而言,有删减的观测数据不会出现问题,而且聚合也是可行的。基于这些理论结果,我们开发了频域聚合方法,并在模拟和实际例子中测试了所提出的估计器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

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On Aggregation of Uncensored and Censored Observations

Abstract

In survival analysis a random right-censoring partitions data into uncensored and censored observations of the lifetime of interest. The dominance of uncensored observations is a familiar methodology in nonparametric estimation motivated by the classical Kaplan–Meier product-limit and Cox partial likelihood estimators. Nonetheless, for high rate censoring it is of interest to understand what, if anything, can be done by aggregating uncensored and censored observations for the staple nonparametric problems of density and regression estimation. The oracle, who knows distribution of the censoring lifetime, can use each subsample for consistent estimation and hence may shed light on the aggregation. The oracle’s asymptotic theory reveals that density estimation, based on censored observations, is an ill-posed problem with slower rates of risk convergence, the ill-posedness occurs in frequency-domain, its severity increases with frequency, and accordingly a special aggregation on low frequencies may be beneficial. On the other hand, censored observations are not ill-posed for nonparametric regression and the aggregation is feasible. Based on these theoretical results, methodology of aggregation in frequency domain is developed and proposed estimators are tested on simulated and real examples.

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来源期刊
Mathematical Methods of Statistics
Mathematical Methods of Statistics STATISTICS & PROBABILITY-
CiteScore
0.60
自引率
0.00%
发文量
2
期刊介绍: Mathematical Methods of Statistics  is an is an international peer reviewed journal dedicated to the mathematical foundations of statistical theory. It primarily publishes research papers with complete proofs and, occasionally, review papers on particular problems of statistics. Papers dealing with applications of statistics are also published if they contain new theoretical developments to the underlying statistical methods. The journal provides an outlet for research in advanced statistical methodology and for studies where such methodology is effectively used or which stimulate its further development.
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