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Semiparametric probit models with univariate and bivariate current‐status data

机译:具有单变量和双变量当前状态数据的半造型探测模型

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摘要

Summary Multivariate current‐status data are frequently encountered in biomedical and public health studies. Semiparametric regression models have been extensively studied for univariate current‐status data, but most existing estimation procedures are computationally intensive, involving either penalization or smoothing techniques. It becomes more challenging for the analysis of multivariate current‐status data. In this article, we study the maximum likelihood estimations for univariate and bivariate current‐status data under the semiparametric probit regression models. We present a simple computational procedure combining the expectation–maximization algorithm with the pool‐adjacent‐violators algorithm for solving the monotone constraint on the baseline function. Asymptotic properties of the maximum likelihood estimators are investigated, including the calculation of the explicit information bound for univariate current‐status data, as well as the asymptotic consistency and convergence rate for bivariate current‐status data. Extensive simulation studies showed that the proposed computational procedures performed well under small or moderate sample sizes. We demonstrate the estimation procedure with two real data examples in the areas of diabetic and HIV research.
机译:摘要在生物医学和公共卫生研究中经常遇到多变量电流状态数据。半造型回归模型已广泛研究单变量当前状态数据,但大多数现有的估算程序都是计算密集的,涉及惩罚或平滑技术。对多变量电流状态数据分析变得更具挑战性。在本文中,我们研究了半扫描概率回归模型下的单变量和双变量当前状态数据的最大似然估计。我们介绍了一个简单的计算过程,将期望最大化算法与池相邻的违规算法相结合,用于解决基线函数上的单调约束。研究了最大似然估计器的渐近性质,包括计算非变量当前状态数据的显式信息,以及用于双变量当前状态数据的渐近一致性和收敛速度。广泛的仿真研究表明,所提出的计算程序在小或中等样品尺寸下进行了良好。我们展示了糖尿病和艾滋病毒研究领域具有两个实际数据示例的估算程序。

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