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Discrete Latent Variable Models
Annual Review of Statistics and Its Application ( IF 7.9 ) Pub Date : 2022-03-07 , DOI: 10.1146/annurev-statistics-040220-091910
Francesco Bartolucci 1 , Silvia Pandolfi 1 , Fulvia Pennoni 2
Affiliation  

We review the discrete latent variable approach, which is very popular in statistics and related fields. It allows us to formulate interpretable and flexible models that can be used to analyze complex datasets in the presence of articulated dependence structures among variables. Specific models including discrete latent variables are illustrated, such as finite mixture, latent class, hidden Markov, and stochastic block models. Algorithms for maximum likelihood and Bayesian estimation of these models are reviewed, focusing, in particular, on the expectation–maximization algorithm and the Markov chain Monte Carlo method with data augmentation. Model selection, particularly concerning the number of support points of the latent distribution, is discussed. The approach is illustrated by summarizing applications available in the literature; a brief review of the main software packages to handle discrete latent variable models is also provided. Finally, some possible developments in this literature are suggested.

中文翻译:


离散潜变量模型

我们回顾了在统计学和相关领域非常流行的离散潜变量方法。它使我们能够制定可解释且灵活的模型,可用于在变量之间存在明确的依赖结构的情况下分析复杂的数据集。说明了包括离散潜变量的特定模型,例如有限混合、潜类、隐马尔可夫和随机块模型。回顾了这些模型的最大似然算法和贝叶斯估计算法,特别关注期望最大化算法和带有数据增强的马尔可夫链蒙特卡罗方法。讨论了模型选择,特别是关于潜在分布的支持点的数量。通过总结文献中可用的应用程序来说明该方法;还简要回顾了处理离散潜变量模型的主要软件包。最后,提出了该文献中一些可能的发展。

更新日期:2022-03-07
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