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Latent regression analysis

机译:潜在回归分析

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Finite mixture models have come to play a very prominent role in modelling data. The finite mixture model is predicated on the assumption that distinct latent groups exist in the population. The finite mixture model therefore is based on a categorical latent variable that distinguishes the different groups. Often in practice, distinct sub-populations do not actually exist. For example, disease severity (e.g., depression) may vary continuously and therefore, a distinction of diseased and non-diseased may not be based on the existence of distinct sub-populations. Thus, what is needed is a generalization of the finite mixture's discrete latent predictor to a continuous latent predictor. We cast the finite mixture model as a regression model with a latent Bernoulli predictor. A latent regression model is proposed by replacing the discrete Bernoulli predictor by a continuous latent predictor with a beta distribution. Motivation for the latent regression model arises from applications where distinct latent classes do not exist, but instead individuals vary according to a continuous latent variable. The shapes of the beta density are very flexible and can approximate the discrete Bernoulli distribution. Examples and a simulation are provided to illustrate the latent regression model. In particular, the latent regression model is used to model placebo effect among drug-treated subjects in a depression study.
机译:有限混合模型在数据建模中起着非常重要的作用。有限混合模型的前提是总体中存在不同的潜在群体。因此,有限混合模型基于区分不同组的分类潜变量。在实践中,通常实际上并不存在不同的子种群。例如,疾病严重性(例如抑郁症)可以连续变化,因此,疾病和非疾病的区分可能不是基于不同亚群的存在。因此,需要将有限混合物的离散潜在预测因子推广到连续潜在预测因子。我们将有限混合模型转换为具有潜在伯努利预测因子的回归模型。通过用具有β分布的连续潜在预测变量代替离散的伯努利预测变量,提出了潜在回归模型。潜在回归模型的动机来自于不存在不同潜在类别的应用程序,而是个体根据连续潜在变量而变化。 β密度的形状非常灵活,可以近似离散的伯努利分布。提供示例和仿真来说明潜在回归模型。特别地,潜伏回归模型用于在抑郁症研究中对药物治疗的受试者之间的安慰剂效应进行建模。

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