Belief Networks (56)

Categories:

See Also:
Featured Links:

http://www.cs.berkeley.edu/~murphyk/Bayes/bayes.html
Editor's Pick A Brief Introduction to Graphical Models and Bayesian Networks Open in a new browser window Editor's Pick
   Kevin Murphy's tutorial, including a recommended reading list.
   http://www.cs.berkeley.edu/~murphyk/Bayes/bayes.html

Regular Links:

http://www.niedermayer.ca/papers/bayesian/
An Introduction to Bayesian Networks and Their Contemporary Applications Open in a new browser window
   A survey and tutorial by Daryle Niedermayer - covers material on Bayesian inference in general and selected industrial applications of graphical models
   http://www.niedermayer.ca/papers/bayesian/
http://www.auai.org/
Association for Uncertainty in Artificial Intelligence Open in a new browser window
   Main association for belief network researchers. Runs the annual Uncertainty in Artificial Intelligence (UAI) conferences, and the UAI mailing list.
   http://www.auai.org/
http://b-course.cs.helsinki.fi
B-Course - Dependence and classification modeling Open in a new browser window
   A free, interactive tutorial on Bayesian modeling, in particular dependence and classification modeling.
   http://b-course.cs.helsinki.fi
http://www.cs.huji.ac.il/labs/compbio/Repository/
Bayesian Network Repository Open in a new browser window
   Maintained by Gal Elidan - over a dozen publicly available networks with documentation, in several popular interchange formats
   http://www.cs.huji.ac.il/labs/compbio/Repository/
http://www.anc.ed.ac.uk/~amos/belief.html
Belief Networks and Variational Methods : Amos Storkey Open in a new browser window
   Dynamic Trees are mixtures of tree structured belief networks, and are used as models for image segmentation and tracking.
   http://www.anc.ed.ac.uk/~amos/belief.html
http://beliefrevision.org
Belief Revision Open in a new browser window
   Software, publications, teaching material, and news on belief revision - from the Business and Technology Research Laboratory at the University of Newcastle, Australia
   http://beliefrevision.org
http://www.abelard.org/briefings/bayes.htm
Cause, chance and Bayesian statistics Open in a new browser window
   Briefing document with a short survey of Bayesian statistics
   http://www.abelard.org/briefings/bayes.htm
http://dags.stanford.edu
Daphne's Approximate Group of Students (DAGS) Open in a new browser window
   Daphne Koller's research group on probabilistic representation, reasoning, and learning at Stanford University
   http://dags.stanford.edu
http://www.sis.pitt.edu/~dsl/
Decision Systems Lab (DSL) Open in a new browser window
   Research group at the University of Pittsburgh with links to books and software on probabilistic, decision-theoretic, and econometric graphical models
   http://www.sis.pitt.edu/~dsl/
http://www-laplace.imag.fr
LAPLACE Group - Bayesian Models for Perception, Inference and Action Open in a new browser window
   Probabilistic reasoning and genetic algorithms for perception, inference and action: Bayesian cognitive and brain models, software for robotics, probabilistic inference engine
   http://www-laplace.imag.fr
http://www.cs.huji.ac.il/~nirf/Nips01-Tutorial/
Learning Bayesian Networks from Data Open in a new browser window
   Slides and additional notes from a tutorial by Nir Friedman and Daphne Koller on automated learning of belief networks, given at the Neural Information Processing Systems (NIPS-2001) conference
   http://www.cs.huji.ac.il/~nirf/Nips01-Tutorial/
http://www.pitt.edu/~druzdzel/abstracts/aisb.html
Qualitative Verbal Explanations in Bayesian Belief Networks Open in a new browser window
   Paper about combining probabilistic models and human-intuitive approaches to modeling uncertainty by generating qualitative verbal explanations of reasoning.
   http://www.pitt.edu/~druzdzel/abstracts/aisb.html
http://www.cs.cmu.edu/afs/cs/project/jair/pub/volume6/darwiche97a-html/jair-f.html
Query DAGs: A Practical Paradigm for Implementing Belief-Network Inference Open in a new browser window
   Article published in JAIR (Journal of AI Research) about a way to implement belief networks by compiling networks into arithmetic expressions and then answering queries using an evaluation algorithm.
   http://www.cs.cmu.edu/afs/cs/project/jair/pub/volume6/darwiche97a-html/jair-f.html

Last Updated: