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Machine learning / Theoretical computer science / M-estimators / Maximum likelihood / Markov random field / Statistical relational learning / Conditional random field / Stochastic gradient descent / Belief propagation / Statistics / Graphical models / Statistical models
Date: 2012-07-18 11:37:23
Machine learning
Theoretical computer science
M-estimators
Maximum likelihood
Markov random field
Statistical relational learning
Conditional random field
Stochastic gradient descent
Belief propagation
Statistics
Graphical models
Statistical models

Lifted Online Training of Relational Models with Stochastic Gradient Methods Babak Ahmadi1 , Kristian Kersting1,2,3 , and Sriraam Natarajan3 1 2

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Source URL: first-mm.informatik.uni-freiburg.de

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