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首页> 外文期刊>The Journal of Artificial Intelligence Research >A Survey on Latent Tree Models and Applications
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A Survey on Latent Tree Models and Applications

机译:潜在树模型及其应用研究

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In data analysis, latent variables play a central role because they help provide powerful insights into a wide variety of phenomena, ranging from biological to human sciences. The latent tree model, a particular type of probabilistic graphical models, deserves attention. Its simple structure - a tree - allows simple and efficient inference, while its latent variables capture complex relationships. In the past decade, the latent tree model has been subject to significant theoretical and methodological developments. In this review, we propose a comprehensive study of this model. First we summarize key ideas underlying the model. Second we explain how it can be efficiently learned from data. Third we illustrate its use within three types of applications: latent structure discovery, multidimensional clustering, and probabilistic inference. Finally, we conclude and give promising directions for future researches in this field.
机译:在数据分析中,潜在变量起着核心作用,因为它们有助于提供对从生物学到人文科学的各种现象的强大见解。潜在树模型(一种特殊的概率图形模型)值得关注。它的简单结构-树-允许简单而有效的推理,而其潜在变量则捕获了复杂的关系。在过去的十年中,潜树模型经历了重大的理论和方法发展。在这篇评论中,我们建议对此模型进行全面的研究。首先,我们总结了该模型的关键思想。其次,我们解释了如何从数据中有效地学习它。第三,我们说明了它在三种类型的应用程序中的使用:潜在结构发现,多维聚类和概率推断。最后,我们总结并为该领域的未来研究提供了有希望的方向。

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