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Analysis of Interactions and Nonlinear Effects with Missing Data: A Factored Regression Modeling Approach Using Maximum Likelihood Estimation

机译:缺少数据的相互作用和非线性效应分析:一种使用最大似然估计的因子回归建模方法

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摘要

When estimating multiple regression models with incomplete predictor variables, it is necessary to specify a joint distribution for the predictor variables. A convenient assumption is that this distribution is a multivariate normal distribution, which is also the default in many statistical software packages. This distribution will in general be misspecified if predictors with missing data have nonlinear effects (e.g., x(2)) or are included in interaction terms (e.g., x center dot z). In the present article, we introduce a factored regression modeling approach for estimating regression models with missing data that is based on maximum likelihood estimation. In this approach, the model likelihood is factorized into a part that is due to the model of interest and a part that is due to the model for the incomplete predictors. In three simulation studies, we showed that the factored regression modeling approach produced valid estimates of interaction and nonlinear effects in regression models with missing values on categorical or continuous predictor variables under a broad range of conditions. We developed the R package mdmb, which facilitates a user-friendly application of the factored regression modeling approach, and present a real-data example that illustrates the flexibility of the software.
机译:当使用不完整的预测器变量估计多个回归模型时,有必要为预测变量指定联合分布。方便的假设是该分布是多变量的正态分布,这也是许多统计软件包中的默认值。如果具有缺失数据的预测器具有非线性效应(例如,x(2))或被包括在交互术语(例如,x中心点z)中,则该分布一般会被遗漏。在本文中,我们介绍了一种因子回归建模方法,用于估计基于最大似然估计的缺失数据的回归模型。在这种方法中,模型可能性被修改为归因于由于感兴趣的模型和由于不完整预测器的模型而导致的部分。在三项模拟研究中,我们表明,因子回归建模方法在广泛的条件下,在回归模型中产生了对回归模型中的相互作用和非线性效应的有效估计。我们开发了R包MDMB,其促进了辅导的回归建模方法的用户友好应用,并呈现了说明软件灵活性的实际数据示例。

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