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A tutorial on bridge sampling

机译:关于桥梁采样的教程

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The marginal likelihood plays an important role in many areas of Bayesian statistics such as parameter estimation, model comparison, and model averaging. In most applications, however, the marginal likelihood is not analytically tractable and must be approximated using numerical methods. Here we provide a tutorial on bridge sampling (Bennett, 1976; Meng & Wong, 1996), a reliable and relatively straightforward sampling method that allows researchers to obtain the marginal likelihood for models of varying complexity. First, we introduce bridge sampling and three related sampling methods using the beta-binomial model as a running example. We then apply bridge sampling to estimate the marginal likelihood for the Expectancy Valence (EV) model a popular model for reinforcement learning. Our results indicate that bridge sampling provides accurate estimates for both a single participant and a hierarchical version of the EV model. We conclude that bridge sampling is an attractive method for mathematical psychologists who typically aim to approximate the marginal likelihood for a limited set of possibly high-dimensional models. (C) 2017 The Authors. Published by Elsevier Inc.
机译:边际可能性在贝叶斯统计的许多领域起着重要作用,例如参数估计,模型比较和模型平均。然而,在大多数应用中,边际可能性在分析上没有分析易行,并且必须使用数值方法近似。在这里,我们提供桥梁采样的教程(Bennett,1976; Meng&Wong,1996),一种可靠且相对简单的采样方法,允许研究人员获得不同复杂性模型的边际可能性。首先,我们使用Beta-Binomial Model作为运行示例来引入桥接采样和三种相关采样方法。然后,我们应用桥采样来估计预期价值(EV)模型的边缘可能性是一种拓宽学习的流行模型。我们的结果表明,网桥采样为单个参与者和EV模型的分层版本提供准确的估计。我们得出结论,桥梁采样是一种有吸引力的数学心理学家的方法,他们通常旨在近似于有限组可能的高维模型的边缘可能性。 (c)2017作者。 elsevier公司发布

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