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A Survey of Non-Exchangeable Priors for Bayesian Nonparametric Models

机译:贝叶斯非参数模型的不可交换先验

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摘要

Dependent nonparametric processes extend distributions over measures, such as the Dirichlet process and the beta process, to give distributions over collections of measures, typically indexed by values in some covariate space. Such models are appropriate priors when exchangeability assumptions do not hold, and instead we want our model to vary fluidly with some set of covariates. Since the concept of dependent nonparametric processes was formalized by MacEachern, there have been a number of models proposed and used in the statistics and machine learning literatures. Many of these models exhibit underlying similarities, an understanding of which, we hope, will help in selecting an appropriate prior, developing new models, and leveraging inference techniques.
机译:依赖的非参数过程扩展了诸如Dirichlet过程和beta过程之类的度量的分布,以给出度量集合的分布,这些度量集合通常由一些协变量空间中的值索引。当可交换性假设不成立时,此类模型是适当的先验条件,相反,我们希望我们的模型能够随着一组协变量的变化而变化。自从MacEachern正式定义了非参数相关过程的概念后,统计和机器学习文献中就提出并使用了许多模型。这些模型中的许多模型都具有潜在的相似性,我们希望对它们的理解有助于选择合适的先验,开发新模型以及利用推理技术。

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