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Statistical decision problems and Bayesian nonparametric methods

机译:统计决策问题和贝叶斯非参数方法

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摘要

This paper considers parametric statistical decision problems conducted within a Bayesian nonparametric context. Our work was motivated by the realisation that typical parametric model selection procedures are essentially incoherent. We argue that one solution to this problem is to use a flexible enough model in the first place, a model that will not be checked no matter what data arrive. Ideally, one would use a nonparametric model to describe all the uncertainty about the density function generating the data. However, parametric models are the preferred choice for many statisticians, despite the incoherence involved in model checking, incoherence that is quite often ignored for pragmatic reasons. In this paper we show how coherent parametric inference can be carried out via decision theory and Bayesian nonparametrics. None of the ingredients discussed here are new, but our main point only becomes evident when one sees all priors-even parametric ones-as measures on sets of densities as opposed to measures on finite-dimensional parameter spaces.
机译:本文考虑了在贝叶斯非参数上下文中进行的参数统计决策问题。我们的工作是由于意识到典型的参数模型选择过程本质上是不连贯的。我们认为,解决此问题的一种方法是首先使用足够灵活的模型,该模型无论出现什么数据都不会被检查。理想情况下,将使用非参数模型来描述有关生成数据的密度函数的所有不确定性。但是,尽管模型检查涉及不连贯性,但由于实用性原因经常会忽略不连贯性,参数模型是许多统计学家的首选。在本文中,我们展示了如何通过决策理论和贝叶斯非参数进行相干参数推理。这里讨论的所有要素都不是新的,但是只有在人们看到所有先验甚至是参数性要素时,我们的要点才变得显而易见,这是对密度集的度量,而不是对有限维参数空间的度量。

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