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The Pitman-Yor multinomial process for mixture modelling

机译:Pitman-YOR多项式加工模拟方法

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摘要

Discrete nonparametric priors play a central role in a variety of Bayesian procedures, most notably when used to model latent features, such as in clustering, mixtures and curve fitting. They are effective and well-developed tools, though their infinite dimensionality is unsuited to some applications. If one restricts to a finite-dimensional simplex, very little is known beyond the traditional Dirichlet multinomial process, which is mainly motivated by conjugacy. This paper introduces an alternative based on the Pitman-Yor process, which provides greater flexibility while preserving analytical tractability. Urn schemes and posterior characterizations are obtained in closed form, leading to exact sampling methods. In addition, the proposed approach can be used to accurately approximate the infinite-dimensional Pitman-Yor process, yielding improvements over existing truncation-based approaches. An application to convex mixture regression for quantitative risk assessment illustrates the theoretical results and compares our approach with existing methods.
机译:离散的非参数前瞻在各种贝叶斯程序中起着核心作用,最值得注意的是,用于模拟潜在特征,例如在聚类,混合物和曲线配件中。它们是有效且开发的工具,尽管它们的无限维度是无限的一些应用程序。如果一个人限制了有限维单纯x,则在传统的Dirichlet多项过程中很少地知道,这主要是由共轭的动机。本文介绍了基于Pitman-Yor工艺的替代方案,这在保持分析途径的同时提供更大的灵活性。在封闭形式获得URN方案和后部表征,导致精确采样方法。此外,所提出的方法可用于准确地近似无限维的pitman-yor过程,从而提高了基于截断的方法。对定量风险评估进行混合回归的应用说明了理论结果,并将我们的方法与现有方法进行了比较。

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