Title :
Maximum weight matching via max-product belief propagation
Author :
Bayati, Mohsen ; Shah, Devavrat ; Sharma, Mayank
Author_Institution :
Dept. of EE, Stanford Univ., CA
Abstract :
The max-product "belief propagation" algorithm is an iterative, local, message passing algorithm for finding the maximum a posteriori (MAP) assignment of a discrete probability distribution specified by a graphical model. Despite the spectacular success of the algorithm in many application areas such as iterative decoding and computer vision which involve graphs with many cycles, theoretical convergence results are only known for graphs which are tree-like or have a single cycle. In this paper, we consider a weighted complete bipartite graph and define a probability distribution on it whose MAP assignment corresponds to the maximum weight matching (MWM) in that graph. We analyze the fixed points of the max-product algorithm when run on this graph and prove the surprising result that even though the underlying graph has many short cycles, the maxproduct assignment converges to the correct MAP assignment. We also provide a bound on the number of iterations required by the algorithm
Keywords :
belief networks; computational complexity; graph theory; maximum likelihood estimation; message passing; statistical distributions; discrete probability distribution; max-product belief propagation algorithm; maximum a posteriori assignment; maximum weight matching; message passing algorithm; weighted complete bipartite graph; Application software; Belief propagation; Computer vision; Convergence; Graphical models; Iterative algorithms; Iterative decoding; Message passing; Probability distribution; Tree graphs;
Conference_Titel :
Information Theory, 2005. ISIT 2005. Proceedings. International Symposium on
Conference_Location :
Adelaide, SA
Print_ISBN :
0-7803-9151-9
DOI :
10.1109/ISIT.2005.1523648