Gaussian Belief Propagation

Belief propagation

Belief propagation is an algorithm used to perform inference on graphical models such as Bayesian networks and Markov random fields. It calculates marginal distributions for unobserved nodes, given observed nodes. It was first proposed by Judea Pearl in 1982 and has been successful in numerous applications.

1 courses cover this concept

CSE 515 Statistical methods in computer science

University of Washington

Winter 2021

It emphasizes inference in engineering settings, utilizing the powerful language of probabilistic graphical models. This course provides a good blend of probability theory, graph theory, and computation.

No concepts data

+ 13 more concepts