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Combinatorial Clustering and the Beta Negative Binomial Process

机译:组合聚类和Beta负二项式过程

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摘要

We develop a Bayesian nonparametric approach to a general family of latent class problems in which individuals can belong simultaneously to multiple classes and where each class can be exhibited multiple times by an individual. We introduce a combinatorial stochastic process known as the () as an infinite-dimensional prior appropriate for such problems. We show that the is conjugate to the beta process, and we characterize the posterior distribution under the beta-negative binomial process () and hierarchical models based on the (the ). We study the asymptotic properties of the and develop a three-parameter extension of the that exhibits power-law behavior. We derive MCMC algorithms for posterior inference under the , and we present experiments using these algorithms in the domains of image segmentation, object recognition, and document analysis.
机译:我们针对潜在类别问题的一般系列开发了一种贝叶斯非参数方法,在该系列中,个人可以同时属于多个类别,并且每个类别可以由一个人多次展示。我们引入了一种组合随机过程,称为(),它是适合此类问题的无穷大先验。我们证明了β与β过程共轭,并且我们描述了β负二项式过程()和基于()的分层模型下的后验分布。我们研究的渐近性质,并开发了显示幂律行为的的三参数扩展。我们在下推导了用于后推的MCMC算法,并提出了在图像分割,对象识别和文档分析领域中使用这些算法进行的实验。

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