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Join-Graph Propagation Algorithms

About

The paper investigates parameterized approximate message-passing schemes that are based on bounded inference and are inspired by Pearl's belief propagation algorithm (BP). We start with the bounded inference mini-clustering algorithm and then move to the iterative scheme called Iterative Join-Graph Propagation (IJGP), that combines both iteration and bounded inference. Algorithm IJGP belongs to the class of Generalized Belief Propagation algorithms, a framework that allowed connections with approximate algorithms from statistical physics and is shown empirically to surpass the performance of mini-clustering and belief propagation, as well as a number of other state-of-the-art algorithms on several classes of networks. We also provide insight into the accuracy of iterative BP and IJGP by relating these algorithms to well known classes of constraint propagation schemes.

Robert Mateescu, Kalev Kask, Vibhav Gogate, Rina Dechter• 2014

Related benchmarks

TaskDatasetResultRank
Marginal InferenceBN
HD Avg0.008
16
Marginal InferenceObjDetect
HD Avg3.00e-5
10
Marginal Inferencesegment
HD_avg5.00e-6
10
Marginal InferenceGridBN
HD Avg1
10
Marginal InferencePROTEIN
HD_avg0.003
10
Marginal InferencePedigree
HD avg0.033
10
Marginal InferencePromedas
HD Avg0.12
10
Marginal InferenceCSP
HD Avg0.017
9
Marginal InferenceGrids
HD Average0.123
9
Marginal InferenceDBN
HD Avg0.06
8
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