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Probability / Coding theory / Probability theory / Bayesian statistics / Theoretical computer science / Belief propagation / Markov random field / Factor graph / Low-density parity-check code / Graphical models / Graph theory / Statistics
Date: 2005-03-21 12:31:16
Probability
Coding theory
Probability theory
Bayesian statistics
Theoretical computer science
Belief propagation
Markov random field
Factor graph
Low-density parity-check code
Graphical models
Graph theory
Statistics

Graphical models, message-passing algorithms, and convex optimization Martin Wainwright Department of Statistics, and Department of Electrical Engineering and Computer Science,

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