Part of Advances in Neural Information Processing Systems 20 (NIPS 2007)
Sujay Sanghavi, Devavrat Shah, Alan Willsky
We investigate the use of message-passing algorithms for the problem of ﬁnding the max-weight independent set (MWIS) in a graph. First, we study the perfor- mance of loopy max-product belief propagation. We show that, if it converges, the quality of the estimate is closely related to the tightness of an LP relaxation of the MWIS problem. We use this relationship to obtain sufﬁcient conditions for correctness of the estimate. We then develop a modiﬁcation of max-product – one that converges to an optimal solution of the dual of the MWIS problem. We also develop a simple iterative algorithm for estimating the max-weight independent set from this dual solution. We show that the MWIS estimate obtained using these two algorithms in conjunction is correct when the graph is bipartite and the MWIS is unique. Finally, we show that any problem of MAP estimation for probability distributions over ﬁnite domains can be reduced to an MWIS problem. We believe this reduction will yield new insights and algorithms for MAP estimation.