Center for Applied Statistical Research, School of Mathematics, Jilin University, Changchun 130012, China.
Department of Statistics, University of Missouri, Columbia, MO, 65211, USA.
Int J Biostat. 2022 Jun 3;19(1):61-79. doi: 10.1515/ijb-2021-0031. eCollection 2023 May 1.
Variable selection is needed and performed in almost every field and a large literature on it has been established, especially under the context of linear models or for complete data. Many authors have also investigated the variable selection problem for incomplete data such as right-censored failure time data. In this paper, we discuss variable selection when one faces bivariate interval-censored failure time data arising from a linear transformation model, for which it does not seem to exist an established procedure. For the problem, a penalized maximum likelihood approach is proposed and in particular, a novel Poisson-based EM algorithm is developed for the implementation. The oracle property of the proposed method is established, and the numerical studies suggest that the method works well for practical situations.
变量选择在几乎每个领域都需要进行,并且已经建立了大量关于它的文献,特别是在线性模型或完整数据的背景下。许多作者还研究了不完全数据(如右删失失效时间数据)的变量选择问题。在本文中,我们讨论了当面对来自线性变换模型的二元区间删失失效时间数据时的变量选择问题,对于这种情况,似乎没有建立既定的程序。对于这个问题,提出了一种惩罚最大似然方法,特别是为实施该方法开发了一种新颖的基于泊松的 EM 算法。建立了所提出方法的 Oracle 性质,并且数值研究表明该方法在实际情况下效果良好。