Latent Tree Models

Piotr Zwiernik
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引用次数: 11

Abstract

Latent tree models are graphical models defined on trees, in which only a subset of variables is observed. They were first discussed by Judea Pearl as tree-decomposable distributions to generalise star-decomposable distributions such as the latent class model. Latent tree models, or their submodels, are widely used in: phylogenetic analysis, network tomography, computer vision, causal modeling, and data clustering. They also contain other well-known classes of models like hidden Markov models, Brownian motion tree model, the Ising model on a tree, and many popular models used in phylogenetics. This article offers a concise introduction to the theory of latent tree models. We emphasise the role of tree metrics in the structural description of this model class, in designing learning algorithms, and in understanding fundamental limits of what and when can be learned.
潜在树模型
潜在树模型是在树上定义的图形模型,其中只观察到变量的子集。它们首先由Judea Pearl作为树可分解分布进行讨论,以推广星可分解分布,如潜在类模型。潜在树模型或其子模型广泛应用于:系统发育分析、网络断层扫描、计算机视觉、因果建模和数据聚类。它们还包含其他著名的模型类别,如隐马尔可夫模型、布朗运动树模型、树上的伊辛模型以及许多在系统发育学中使用的流行模型。本文简要介绍了潜在树模型的理论。我们强调树形度量在模型类的结构描述、学习算法的设计以及对学习内容和时间的基本限制的理解中的作用。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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