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Posterior Simulation of Normalized Random Measure Mixtures

机译:归一化随机量度混合物的后验模拟

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摘要

This article describes posterior simulation methods for mixture models whose mixing distribution has a Normalized Random Measure prior. The methods use slice sampling ideas and introduce no truncation error. The approach can be easily applied to both homogeneous and nonhomogeneous Normalized Random Measures and allows the updating of the parameters of the random measure. The methods are illustrated on data examples using both Dirichlet and Normalized Generalized Gamma process priors. In particular, the methods are shown to be computationally competitive with previously developed samplers for Dirichlet process mixture models. Matlab code to implement these methods is available as supplemental material.
机译:本文介绍了混合模型具有先验归一化随机度量的混合模型的后验模拟方法。该方法使用切片采样思想,并且不引入截断误差。该方法可以容易地应用于均质和非均质归一化随机度量,并且允许更新随机度量的参数。在数据示例中使用Dirichlet和Normalized Generalized Gamma工艺先验对方法进行了说明。特别是,对于Dirichlet过程混合物模型,该方法显示出与先前开发的采样器相比在计算上具有竞争力。实现这些方法的Matlab代码可作为补充材料。

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