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Assessing the performance of variational methods for mixed logistic regression models

机译:评估混合Logistic回归模型的变分方法的性能

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We present a variational estimation method for the mixed logistic regression model. The method is based on a lower bound approximation of the logistic function [Jaakkola, J.S. and Jordan, M.I., 2000, Bayesian parameter estimation via variational methods. Statistics & Computing, 10, 25-37.]. Based on the approximation, an EM algorithm can be derived that results in a considerable simplification of the maximization problem in that it does not require the numerical evaluation of integrals over the random effects. We assess the performance of the variational method for the mixed logistic regression model in a simulation study and an empirical data example, and compare it to Laplace's method. The results indicate that the variational method is a viable choice for estimating the fixed effects of the mixed logistic regression model under the condition that the number of outcomes within each cluster is sufficiently high.
机译:我们提出了一种混合逻辑回归模型的变分估计方法。该方法基于逻辑函数的下界近似值[Jaakkola,J.S.和Jordan,M.I.,2000,通过变分方法进行贝叶斯参数估计。统计与计算,第10卷,第25-37页。]。基于该近似,可以得出EM算法,该算法可以极大地简化最大化问题,因为它不需要对随机效应进行积分的数值评估。我们在模拟研究和经验数据示例中评估了混合逻辑回归模型的变分方法的性能,并将其与拉普拉斯方法进行了比较。结果表明,在每个聚类中的结果数量足够高的情况下,变分法是估计混合逻辑回归模型的固定效应的可行选择。

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