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Bayesian inference as iterated random functions with applications to sequential inference in graphical models (1311.0072v1)
Published 1 Nov 2013 in stat.ML, math.ST, stat.ME, and stat.TH
Abstract: 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.