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Inference functions in high dimensional Bayesian inference

机译:高维贝叶斯推理中的推理功能

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Nonparametric Bayesian models, such as those based on the Dirichlet process or its many variants, provide a flexible class of models that allow us to fit widely varying patterns in data. Typical uses of the models include relatively low-dimensional driving terms to capture global features of the data along with a nonparametric structure to capture local features. The models are particularly good at handling outliers, a common form of local behavior, and examination of the posterior often shows that a portion of the model is chasing the outliers. This suggests the need for robust inference to discount the impact of the outliers on the overall analysis. We advocate the use of inference functions to define relevant parameters that are robust to the deficiencies in the model and illustrate their use in two examples.
机译:非参数贝叶斯模型(例如基于Dirichlet流程或其许多变体的模型)提供了灵活的模型类别,使我们能够适应数据中广泛变化的模式。模型的典型用途包括相对较低维的驱动项,以捕获数据的全局特征,以及非参数结构,以捕获局部特征。该模型特别擅长处理离群值,局部行为的常见形式,并且对后验的检查通常表明模型的一部分正在追赶离群值。这表明需要进行可靠的推断,以减少异常值对整体分析的影响。我们提倡使用推断函数来定义对模型中的缺陷具有鲁棒性的相关参数,并在两个示例中说明它们的用法。

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