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首页> 外文期刊>Journal of the Royal Statistical Society >Fitting multilevel multivariate models with missing data in responses and covariates that may include interactions and non-linear terms
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Fitting multilevel multivariate models with missing data in responses and covariates that may include interactions and non-linear terms

机译:使用响应和协变量中可能包含交互作用和非线性项的数据缺失来拟合多级多元模型

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摘要

The paper extends existing models for multilevel multivariate data with mixed response types to handle quite general types and patterns of missing data values in a wide range of multilevel generalized linear models. It proposes an efficient Bayesian modelling approach that allows missing values in covariates, including models where there are interactions or other functions of covariates such as polynomials. The procedure can also be used to produce multiply imputed complete data sets. A simulation study is presented as well as the analysis of a longitudinal data set. The paper also shows how existing multiprocess models for handling endogeneity can be extended by the framework proposed.
机译:本文扩展了具有混合响应类型的多级多元数据的现有模型,以处理广泛的多级广义线性模型中的通用数据丢失类型和类型。它提出了一种有效的贝叶斯建模方法,该方法允许协变量中缺少值,包括协变量之间存在相互作用或其他函数(例如多项式)的模型。该过程还可以用于生成多个估算的完整数据集。提出了模拟研究以及对纵向数据集的分析。本文还展示了如何通过提出的框架扩展现有的用于处理内生性的多过程模型。

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