In recent years, local message-passing algorithms (i.e., belief propagation, max-product) have been widely used to compute approximate solutions in graphs with cycles. We describe a class of reweighted message-passing algorithms, and demonstrate how they can be understood as methods for solving graph-structured optimization problems. These modified algorithms have advantages over standard methods, including unique fixed points and guaranteed upper bounds (reweighted belief propagation), and performance guarantees (reweighted mix-product). We discuss applications of graphical models and message-passing to statistical image processing and error-control coding, as well as directions for future research.
03-23
Message-passing Algorithms in Graphical Models and their Applications to Large-Scale Stochastic Systems
Probability distributions defined by graphs arise in a variety of fields, including statistical signal and image processing, sensor networks, machine learning, and comunication theory. Graphical models provide a principled framework in which to combine local constraints so as to construct a global model. Important practical problems in applications of graphical models include computing marginal distributions or modes, and the log partition function.
Although these problems can be solved efficiently in tree-structured models, these same tasks are intractable for general large-scale graphs with cycles.
Date and Time
Tuesday March 23, 2004 4:30pm -
6:00pm
Location
Computer Science Small Auditorium (Room 105)
Event Type
Speaker
Martin Wainwright, from UC Berkeley
Host
Robert Schapire
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