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Learning Factor Graphs in Polynomial Time & Sample Complexity

Published 13 years agoVersion 1arXiv:1207.1366

Authors

Pieter Abbeel, Daphne Koller, Andrew Y. Ng

Categories

cs.LGstat.ML

Abstract

We study computational and sample complexity of parameter and structure learning in graphical models. Our main result shows that the class of factor graphs with bounded factor size and bounded connectivity can be learned in polynomial time and polynomial number of samples, assuming that the data is generated by a network in this class. This result covers both parameter estimation for a known network structure and structure learning. It implies as a corollary that we can learn factor graphs for both Bayesian networks and Markov networks of bounded degree, in polynomial time and sample complexity. Unlike maximum likelihood estimation, our method does not require inference in the underlying network, and so applies to networks where inference is intractable. We also show that the error of our learned model degrades gracefully when the generating distribution is not a member of the target class of networks.

Learning Factor Graphs in Polynomial Time & Sample Complexity

13 years ago
v1
3 authors

Categories

cs.LGstat.ML

Abstract

We study computational and sample complexity of parameter and structure learning in graphical models. Our main result shows that the class of factor graphs with bounded factor size and bounded connectivity can be learned in polynomial time and polynomial number of samples, assuming that the data is generated by a network in this class. This result covers both parameter estimation for a known network structure and structure learning. It implies as a corollary that we can learn factor graphs for both Bayesian networks and Markov networks of bounded degree, in polynomial time and sample complexity. Unlike maximum likelihood estimation, our method does not require inference in the underlying network, and so applies to networks where inference is intractable. We also show that the error of our learned model degrades gracefully when the generating distribution is not a member of the target class of networks.

Authors

Pieter Abbeel, Daphne Koller, Andrew Y. Ng

arXiv ID: 1207.1366
Published Jul 4, 2012

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