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On a Class of Random Probability Measures with General Predictive Structure

机译:一类具有一般预测结构的随机概率测度

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In this study, we investigate a recently introduced class of non-parametric priors, termed generalized Dirichlet process priors. Such priors induce (exchangeable random) partitions that are characterized by a more elaborate clustering structure than those arising from other widely used priors. A natural area of application of these random probability measures is represented by species sampling problems and, in particular, prediction problems in genomics. To this end, we study both the distribution of the number of distinct species present in a sample and the distribution of the number of new species conditionally on an observed sample. We also provide the Bayesian Non-parametric estimator for the number of new species in an additional sample of given size and for the discovery probability as function of the size of the additional sample. Finally, the study of its conditional structure is completed by the determination of the posterior distribution.
机译:在这项研究中,我们调查了最近引入的一类非参数先验,称为广义Dirichlet过程先验。这样的先验诱发(可交换的随机)分区,其特征是比起其他广泛使用的先验所产生的分区更精细的聚类结构。这些随机概率度量的自然应用领域是物种采样问题,尤其是基因组学中的预测问题。为此,我们既要研究样本中存在的不同物种的数量分布,又要有条件地在观察到的样本上研究新物种的数量分布。我们还为给定大小的附加样本中的新物种数量提供了贝叶斯非参数估计器,并提供了随附加样本的大小而变化的发现概率。最后,通过确定后验分布来完成其条件结构的研究。

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