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Post-Inference Prior Swapping

机译:推断后优先交换

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摘要

While Bayesian methods are praised for their ability to incorporate useful prior knowledge, in practice, convenient priors that allow for computationally cheap or tractable inference are commonly used. In this paper, we investigate the following question: for a given model, is it possible to compute an inference result with any convenient false prior, and afterwards, given any target prior of interest, quickly transform this result into the target posterior? A potential solution is to use importance sampling (IS). However, we demonstrate that IS will fail for many choices of the target prior, depending on its parametric form and similarity to the false prior. Instead, we propose prior swapping, a method that leverages the pre-inferred false posterior to efficiently generate accurate posterior samples under arbitrary target priors. Prior swapping lets us apply less-costly inference algorithms to certain models, and incorporate new or updated prior information “post-inference”. We give theoretical guarantees about our method, and demonstrate it empirically on a number of models and priors.
机译:尽管贝叶斯方法以其结合有用的先验知识的能力而受到赞誉,但在实践中,通常使用方便的先验方法,这种先验方法允许计算便宜或易于处理的推理。在本文中,我们研究以下问题:对于给定的模型,是否有可能以任何方便的假先验来计算推断结果,然后在给定感兴趣的任何目标先验后,迅速将该结果转换为目标后验?潜在的解决方案是使用重要性抽样(IS)。但是,我们证明,IS将因目标先验的许多选择而失败,这取决于其参数形式和与错误先验的相似性。取而代之的是,我们提出先验交换,一种利用预推断的假后验来有效生成任意目标先验下的准确后验样本的方法。优先交换使我们可以将成本较低的推理算法应用于某些模型,并合并新的或更新的优先信息“后推理”。我们为我们的方法提供了理论上的保证,并在许多模型和先验经验上进行了证明。

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