性伙伴关系持续时间:描述允许无偏估计生存和协变量对其影响的抽样条件。

Research & reviews. Journal of statistics and mathematical sciences Pub Date : 2018-06-01 Epub Date: 2018-05-18
Yared Gurmu, Jing Qian, Victor De Gruttola
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引用次数: 0

摘要

伙伴关系持续时间数据通常通过调查获得,这些调查收集了在固定时间窗口内正在进行的关系的信息。这种采样机制导致持续时间数据被左截断和右删减;使用标准截断积极限估计器(TPLE)对这些数据进行了分析。本文描述了一种收集性伴侣数据的常见抽样方案,讨论了TPLE无偏所需的一个关键假设,并提供了关系持续时间分布的非参数最大似然估计唯一和一致的条件。我们还研究了Cox比例风险模型中回归系数一致性所需的条件,即使由于截断分布的支持限制而无法完全识别持续时间的分布,该模型也适用。最后,我们将提供一些说明性的例子来估计最近伙伴关系的分布,并根据从博茨瓦纳Mochudi的性行为调查中收集的伙伴关系数据给出样条回归结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。

A Sexual Partnership Duration: Characterizing Sampling Conditions That Permit unbiased Estimation of Survivorship and Effect on It of Covariates.

A Sexual Partnership Duration: Characterizing Sampling Conditions That Permit unbiased Estimation of Survivorship and Effect on It of Covariates.

A Sexual Partnership Duration: Characterizing Sampling Conditions That Permit unbiased Estimation of Survivorship and Effect on It of Covariates.

A Sexual Partnership Duration: Characterizing Sampling Conditions That Permit unbiased Estimation of Survivorship and Effect on It of Covariates.

Partnership duration data are commonly obtained through surveys that collect information on relationships that are ongoing during a fixed time window. This sampling mechanism leads to duration data that are left truncated and right censored; such data have been analysed using the standard truncation product limit estimator (TPLE). In this paper, we describe a common sampling scheme for collecting sexual partnership data, discuss a key assumption required for the TPLE to be unbiased, and provide the conditions under which the nonparametric maximum likelihood estimator of the relationship duration distribution is unique and consistent. We also investigate the conditions required for the consistency of the regression coefcient from a Cox proportional hazards model that apply even when the distribution of duration is not completely identifiable due to restrictions on the support of the truncation distribution. Lastly, we will provide some illustrative examples on estimating distribution of most recent partnerships and present spline regression results based on partnership data collected from sexual behavior survey in Mochudi, Botswana.

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