Belief propagation with loops

Bethe approximation, Kikuchi approximations, loop calculus

September 18, 2020 — October 24, 2023

algebra
graphical models
how do science
machine learning
networks
neural nets
probability
statistics
Figure 1

Local versus global information flows in inference.

1 Bethe approximation

2 Regional approximations

3 Loop calculus

4 References

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Chertkov, and Chernyak. 2006a. Loop Series for Discrete Statistical Models on Graphs.” Journal of Statistical Mechanics: Theory and Experiment.
———. 2006b. Loop Calculus in Statistical Physics and Information Science.” Physical Review E.
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Gómez, Mooij, and Kappen. 2007. Truncating the Loop Series Expansion for Belief Propagation.” The Journal of Machine Learning Research.
Kirkley, Cantwell, and Newman. 2021. Belief Propagation for Networks with Loops.” Science Advances.
Kroc, and Chertkov. 2008. “Loop Calculus for Satisfiability.” In Proceedings of the 23rd National Conference on Artificial Intelligence - Volume 3. AAAI’08.
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Yedidia, Jonathan S., Freeman, and Weiss. 2000. “Generalized Belief Propagation.” In Proceedings of the 13th International Conference on Neural Information Processing Systems. NIPS’00.
Yedidia, J.S., Freeman, and Weiss. 2003. Understanding Belief Propagation and Its Generalizations.” In Exploring Artificial Intelligence in the New Millennium.
———. 2005. Constructing Free-Energy Approximations and Generalized Belief Propagation Algorithms.” IEEE Transactions on Information Theory.