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Thursday, December 5 • 7:00pm - 11:59pm
Marginals-to-Models Reducibility

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We consider a number of classical and new computational problems regarding marginal distributions, and inference in models specifying a full joint distribution. We prove general and efficient reductions between a number of these problems, which demonstrate that algorithmic progress in inference automatically yields progress for “pure data” problems. Our main technique involves formulating the problems as linear programs, and proving that the dual separation oracle for the Ellipsoid Method is provided by the target problem. This technique may be of independent interest in probabilistic inference.
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Speakers
MK

Michael Kearns

Michael Kearns is Professor and National Center Chair in the Computer and Information Science department at the University of Pennsylvania. His research interests include topics in machine learning, algorithmic game theory, social networks, and computational finance. Prior to joining... Read More →


Thursday December 5, 2013 7:00pm - 11:59pm PST
Harrah's Special Events Center, 2nd Floor
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