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Selecting the precision parameter prior in Dirichlet process mixture models

机译:在Dirichlet过程混合模型中先选择精度参数

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We consider Dirichlet process mixture models in which the observed clusters in any particular dataset are not viewed as belonging to a finite set of possible clusters but rather as representatives of a latent structure in which objects belong to one of a potentially infinite number of clusters. As more information is revealed the number of inferred clusters is allowed to grow. The precision parameter of the Dirichlet process is a crucial parameter that controls the number of clusters. We develop a framework for the specification of the hyperparameters associated with the prior for the precision parameter that can be used both in the presence or absence of subjective prior information about the level of clustering. Our approach is illustrated in an analysis of clustering brands at the magazine Which?. The results are compared with the approach of Dorazio (2009) via a simulation study.
机译:我们考虑Dirichlet过程混合模型,在该模型中,在任何特定数据集中观察到的聚类都不被视为属于可能聚类的有限集合,而是被视为潜在结构的代表,其中对象属于潜在无限数量的聚类之一。随着更多信息的揭示,推断群集的数量将增加。 Dirichlet过程的精确度参数是控制簇数的关键参数。我们为与精确度参数的先验关联的超参数的规范开发了一个框架,该模型可以在存在或不存在有关聚类水平的主观先验信息的情况下使用。我们的方法在《哪个?》杂志上对集群品牌的分析中得到了说明。通过模拟研究,将结果与Dorazio(2009)的方法进行了比较。

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