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Bayesian inference as iterated random functions with applications to sequential inference in graphical models

机译:贝叶斯推断作为迭代随机函数,其中应用于在图形模型中顺序推断

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摘要

We propose a general formalism of iterated random functions with semigroup property, under which exact and approximate Bayesian posterior updates can be viewed as specific instances. A convergence theory for iterated random functions is presented. As an application of the general theory we analyze convergence behaviors of exact and approximate message-passing algorithms that arise in a sequential change point detection problem formulated via a latent variable directed graphical model. The sequential inference algorithm and its supporting theory are illustrated by simulated examples.
机译:我们提出了一种与半群属性的迭代随机函数的一般形式主义,在该属性中,可以将精确和近似的贝叶斯后更新视为特定的实例。提出了迭代随机函数的收敛理论。作为一般理论的应用,我们分析了通过潜在可变指导图形模型制定的顺序变化点检测问题中出现的精确和近似消息传递算法的收敛行为。通过模拟示例说明了顺序推理算法及其支持理论。

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