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Modeling with Normalized Random Measure Mixture Models

机译:使用归一化随机量度混合模型建模

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The Dirichlet process mixture model and more general mixtures based on discrete random probability measures have been shown to be flexible and accurate models for density estimation and clustering. The goal of this paper is to illustrate the use of normalized random measures as mixing measures in nonparametric hierarchical mixture models and point out how possible computational issues can be successfully addressed. To this end, we first provide a concise and accessible introduction to normalized random measures with independent increments. Then, we explain in detail a particular way of sampling from the posterior using the Ferguson-Klass representation. We develop a thorough comparative analysis for location-scale mixtures that considers a set of alternatives for the mixture kernel and for the non-parametric component. Simulation results indicate that normalized random measure mixtures potentially represent a valid default choice for density estimation problems. As a byproduct of this study an R package to fit these models was produced and is available in the Comprehensive R Archive Network (CRAN).
机译:Dirichlet过程混合模型和基于离散随机概率测度的更一般的混合已被证明是用于密度估计和聚类的灵活而准确的模型。本文的目的是说明在非参数分层混合模型中使用标准化随机度量作为混合度量,并指出如何成功解决可能的计算问题。为此,我们首先对具有独立增量的归一化随机度量进行简要介绍。然后,我们详细说明使用Ferguson-Klass表示从后验进行采样的一种特殊方式。我们针对位置尺度的混合物开发了详尽的比较分析,其中考虑了混合物核和非参数组分的一组替代方案。仿真结果表明,归一化的随机度量混合可能代表密度估计问题的有效默认选择。作为此研究的副产品,已生产出适合这些模型的R包,该包可在综合R存档网络(CRAN)中获得。

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