Maximum Likelihood Estimation for Shape-restricted Single-index Hazard Models.

Journal of data science : JDS Pub Date : 2023-10-01 Epub Date: 2022-11-04 DOI:10.6339/22-jds1061
Jing Qin, Yifei Sun, Ao Yuan, Chiung-Yu Huang
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Abstract

Single-index models are becoming increasingly popular in many scientific applications as they offer the advantages of flexibility in regression modeling as well as interpretable covariate effects. In the context of survival analysis, the single-index hazards models are natural extensions of the Cox proportional hazards models. In this paper, we propose a novel estimation procedure for single-index hazard models under a monotone constraint of the index. We apply the profile likelihood method to obtain the semiparametric maximum likelihood estimator, where the novelty of the estimation procedure lies in estimating the unknown monotone link function by embedding the problem in isotonic regression with exponentially distributed random variables. The consistency of the proposed semiparametric maximum likelihood estimator is established under suitable regularity conditions. Numerical simulations are conducted to examine the finite-sample performance of the proposed method. An analysis of breast cancer data is presented for illustration.

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形状受限单指数危险模型的最大似然估计。
单指数模型具有回归建模灵活、协变量效应可解释等优点,因此在许多科学应用中越来越受欢迎。在生存分析中,单指数危险模型是 Cox 比例危险模型的自然扩展。在本文中,我们提出了一种在指数单调约束条件下的单指数危险模型的新型估计程序。我们应用轮廓似然法获得半参数最大似然估计器,估计程序的新颖之处在于通过将问题嵌入指数分布随机变量的等比数列回归中来估计未知的单调联系函数。在适当的正则条件下,建立了所提出的半参数最大似然估计器的一致性。通过数值模拟,检验了所提方法的有限样本性能。并通过对乳腺癌数据的分析进行了说明。
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