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A mixture latent variable model for modeling mixed data in heterogeneous populations and its applications

机译:混合潜在变量模型在异质种群中的混合数据及其应用

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摘要

Latent variable models are widely used for jointly modeling of mixed data including nominal, ordinal, count and continuous data. In this paper, we consider a latent variable model for jointly modeling relationships between mixed binary, count and continuous variables with some observed covariates. We assume that, given a latent variable, mixed variables of interest are independent and count and continuous variables have Poisson distribution and normal distribution, respectively. As such data may be extracted from different subpopulations, consideration of an unobserved heterogeneity has to be taken into account. A mixture distribution is considered (for the distribution of the latent variable) which accounts the heterogeneity. The generalized EM algorithm which uses the Newton-Raphson algorithm inside the EM algorithm is used to compute the maximum likelihood estimates of parameters. The standard errors of the maximum likelihood estimates are computed by using the supplemented EM algorithm. Analysis of the primary biliary cirrhosis data is presented as an application of the proposed model.
机译:潜变量模型被广泛用于联合建模混合数据,包括标称,序数,计数和连续数据。在本文中,我们考虑了一个潜在变量模型,用于联合建模混合二进制,计数和连续变量之间的关系以及一些观察到的协变量。我们假设给定一个潜在变量,感兴趣的混合变量是独立的,计数和连续变量分别具有泊松分布和正态分布。由于可以从不同的亚人群中提取此类数据,因此必须考虑未观察到的异质性。考虑了混合分布(对于潜在变量的分布),该分布说明了异质性。使用在EM算法内部使用Newton-Raphson算法的通用EM算法来计算参数的最大似然估计。最大似然估计的标准误差通过使用补充的EM算法来计算。提出的原发性胆汁性肝硬化数据分析作为该模型的应用。

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