Accelerated Quantification of Bayesian Networks with Incomplete Data (1995)

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by Bo Thiesson
Venue:In Proceedings of First International Conference on Knowledge Discovery and Data Mining
Citations:28 - 2 self

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849 A tutorial on learning with Bayesian networks – David Heckerman - 1995
unknown title – Learning Bayesian
564 Dynamic Bayesian Networks: Representation, Inference and Learning – Kevin Patrick Murphy - 2002
11 Score and Information for Recursive Exponential Models with Incomplete Data. – Bo Thiesson
36 Learning Probabilistic Networks – Paul J Krause - 1998
167 Probabilistic independence networks for hidden Markov probability models – Padhraic Smyth, David Heckerman, Michael I. Jordan - 1996
7 Bayesian Networks with Applications in Reliability Analysis – Helge Langseth - 2002
13 Parameter Learning in Object Oriented Bayesian Networks – Helge Langseth, Olav Bangsø - 2001
14 Theory refinement of bayesian networks with hidden variables – Sowmya Ramachandran - 1998
24 Irrelevance and parameter learning in Bayesian networks – Jiang Su, Harry Zhang, Charles X. Ling, Stan Matwin - 1996
172 A Guide to the Literature on Learning Probabilistic Networks From Data – Wray Buntine - 1996
127 Space-Alternating Generalized Expectation-Maximization Algorithm – Jeffrey A. Fessler, Alfred O. Hero - 1994
13 Kullback Proximal Algorithms for Maximum Likelihood Estimation – Stéphane Chrétien, Alfred O. Hero - 1998
35 Accelerating EM for large databases – Bo Thiesson, Christopher Meek, David Heckerman - 2001
Aspects of the Interface between STatistics and . . . – Matt Whiley - 1999
8 Challenge: Where is the Impact of Bayesian Networks in Learning? – Nir Friedman, Moises Goldszmidt, David Heckerman - 1997
79 A Bayesian Approach to Causal Discovery – David Heckerman, Christopher Meek, Gregory Cooper - 1997
178 Efficient approximations for the marginal likelihood of Bayesian networks with hidden variables – David Maxwell Chickering, David Heckerman - 1997
MLnet Summer School on Machine Learning and Knowledge Acquisition: LEARNING AND PROBABILITIES – Wray Buntine