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The impact of covariance misspecification in multivariate Gaussian mixtures on estimation and inference: An application to longitudinal modeling

机译:多元高斯混合中协方差错误指定对估计和推断的影响:在纵向建模中的应用

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Multivariate Gaussian mixtures are a class of models that provide a flexible parametric approach for the representation of heterogeneous multivariate outcomes. When the outcome is a vector of repeated measurements taken on the same subject, there is often inherent dependence between observations. However, a common covariance assumption is conditional independence-that is, given the mixture component label, the outcomes for subjects are independent. In this paper, we study, through asymptotic bias calculations and simulation, the impact of covariance misspecification in multivariate Gaussian mixtures. Although maximum likelihood estimators of regression and mixing probability parameters are not consistent under misspecification, they have little asymptotic bias when mixture components are well separated or if the assumed correlation is close to the truth even when the covariance is misspecified. We also present a robust standard error estimator and show thatit outperforms conventional estimators in simulations and can indicate that the model is misspecified. Body mass index data from a national longitudinal study are used to demonstrate the effects of misspecification on potential inferences made in practice. 2013 John Wiley & Sons, Ltd.
机译:多元高斯混合是一类模型,可为异质多元结果的表示提供灵活的参数方法。当结果是对同一主题进行重复测量的向量时,观察之间通常存在内在的依赖关系。但是,一个常见的协方差假设是条件独立性,也就是说,给定混合成分标签,受试者的结果是独立的。在本文中,我们通过渐近偏差计算和模拟研究协方差错指定对多元高斯混合物的影响。尽管在错误指定条件下回归和混合概率参数的最大似然估计值不一致,但当混合成分很好地分离或假设协方差被错误指定时,即使假设相关性接近于真值,它们的渐近偏差也很小。我们还提出了一个鲁棒的标准误差估计器,并表明它在仿真中优于传统估计器,并且可以表明模型指定不正确。来自全国纵向研究的体重指数数据用于证明错误指定对实践中可能得出的推论的影响。 2013 John Wiley&Sons,Ltd.

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