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Graphical models / Mathematics / Mathematical analysis / Probability / Mathematical optimization / Combinatorial optimization / Linear programming / Operations research / Markov random field / Linear programming relaxation / Relaxation / Randomized rounding
Date: 2015-01-26 18:37:33
Graphical models
Mathematics
Mathematical analysis
Probability
Mathematical optimization
Combinatorial optimization
Linear programming
Operations research
Markov random field
Linear programming relaxation
Relaxation
Randomized rounding

Unifying Local Consistency and MAX SAT Relaxations for Scalable Inference with Rounding Guarantees Stephen H. Bach University of Maryland

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