Stratified Exponential Families: Graphical Models and Model Selection (1998)

by Dan Geiger , David Heckerman , Henry King , Christopher Meek
Venue:ANNALS OF STATISTICS
Citations:54 - 6 self

Active Bibliography

19 Graphical models and exponential families – Dan Geiger, Christopher Meek - 1998
563 Dynamic Bayesian Networks: Representation, Inference and Learning – Kevin Patrick Murphy - 2002
25 Inference and Learning in Hybrid Bayesian Networks – Kevin P. Murphy - 1998
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36 Learning Probabilistic Networks – Paul J Krause - 1998
LATENT TREE MODELS: AN APPLICATION AND AN EXTENSION – Kin-man Poon - 2012
8 Challenge: Where is the Impact of Bayesian Networks in Learning? – Nir Friedman, Moises Goldszmidt, David Heckerman - 1997
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175 The Bayes Net Toolbox for MATLAB – Kevin P. Murphy - 2001
56 Causal Inference from Graphical Models – Steffen L Lauritzen - 2001
47 An Alternative Markov Property for Chain Graphs – Steen Andersson, David Madigan, Michael Perlman - 1996
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11 Statistics and Causal Inference: A Review – Judea Pearl - 2003