Accumulator Networks: Suitors of Local Probability Propagation

Part of Advances in Neural Information Processing Systems 13 (NIPS 2000)

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Authors

Brendan J. Frey, Anitha Kannan

Abstract

One way to approximate inference in richly-connected graphical models is to apply the sum-product algorithm (a.k.a. probabil(cid:173) ity propagation algorithm), while ignoring the fact that the graph has cycles. The sum-product algorithm can be directly applied in Gaussian networks and in graphs for coding, but for many condi(cid:173) tional probability functions - including the sigmoid function - di(cid:173) rect application of the sum-product algorithm is not possible. We introduce "accumulator networks" that have low local complexity (but exponential global complexity) so the sum-product algorithm can be directly applied. In an accumulator network, the probability of a child given its parents is computed by accumulating the inputs from the parents in a Markov chain or more generally a tree. After giving expressions for inference and learning in accumulator net(cid:173) works, we give results on the "bars problem" and on the problem of extracting translated, overlapping faces from an image.