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Constructing informative model priors using hierarchical methods

机译:使用分层方法构建信息模型先验

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Despite their negative reputation, informative priors are very useful in inference. Priors that express psychologically meaningful intuitions damp out random fluctuations in the data due to sampling variability, without sacrificing flexibility. This article focuses on how an intuitively satisfying informative prior distribution can be constructed. In particular, it demonstrates how the hierarchical introduction of a parameterized generative account of the set of models under consideration naturally imposes a non-uniform prior distribution over the models, encoding existing intuitions about the models. The hierarchical approach for constructing informative model priors is made concrete using a worked example, the Varying Abstraction Model (VAM), a family of categorization models including and expanding the exemplar and prototype models. It is shown how psychological intuitions about the relative plausibilities of the models in the VAM can be formally captured in an informative prior distribution over these models, by specifying a theoretically informed process for generating the models in the VAM. The smoothing effect of the informative prior in estimation is demonstrated by considering ten previously published data sets from the category learning literature.
机译:尽管它们的声誉很差,但是先验信息在推理中还是很有用的。表示心理上有意义的直觉的先验会在不牺牲灵活性的情况下,消除由于采样变化而导致的数据随机波动。本文重点介绍如何构建直观令人满意的信息先验分布。特别是,它演示了所考虑的模型集的参数化生成帐户的分层引入如何自然地对模型施加非均匀的先验分布,从而对模型的现有直觉进行编码。使用工作示例Varying Abstraction Model(VAM)来具体构造用于构造信息模型先验的分层方法,该模型是一类分类模型,包括并扩展了示例模型和原型模型。它显示了如何通过指定在VAM中生成模型的理论依据的过程,在这些模型的信息性先验分布中正式捕获有关VAM中模型的相对可行性的心理直觉。通过考虑类别学习文献中的十个先前发布的数据集,可以证明信息先验估计的平滑效果。

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