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Performances of Bayesian model selection criteria for generalized linear models with non-ignorably missing covariates

机译:具有不可忽略的协变量的广义线性模型的贝叶斯模型选择准则的性能

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摘要

This article deals with model comparison as an essential part of generalized linear modelling in the presence of covariates missing not at random (MNAR). We provide an evaluation of the performances of some of the popular model selection criteria, particularly of deviance information criterion (DIC) and weighted L (WL.) measure, for comparison among a set of candidate MNAR models. In addition, we seek to provide deviance and quadratic loss-based model selection criteria with alternative penalty terms targeting directly the MNAR models. This work is motivated by the need in the literature to understand the performances of these important model selection criteria for comparison among a set of MNAR models. A Monte Carlo simulation experiment is designed to assess the finite sample performances of these model selection criteria in the context of interest under different scenarios for missingness amounts. Some naturally driven DIC and WL extensions are also discussed and evaluated.
机译:本文将模型比较作为广义线性建模的重要部分,其中存在协变量不随机缺失(MNAR)。我们提供了一些流行模型选择标准(尤其是偏差信息标准(DIC)和加权L(WL。)度量)的性能评估,以便在一组候选MNAR模型之间进行比较。此外,我们寻求提供基于偏差和基于二次损失的模型选择标准,以及直接针对MNAR模型的替代惩罚项。这项工作的动力是文献中需要了解这些重要模型选择标准的性能,以便在一组MNAR模型之间进行比较。设计了蒙特卡罗模拟实验,以评估在不同情境下缺失量的情况下,这些模型选择标准的有限样本性能。还讨论和评估了一些自然驱动的DIC和WL扩展。

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