Inference in Temporal Models

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Skills You'll Learn

Inference, Gibbs Sampling, Markov Chain Monte Carlo (MCMC), Belief Propagation

Reviews

4.6 (482 ratings)

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OD

Mar 11, 2017

Thanks a lot for professor D.K.'s great course for PGM inference part. Really a very good starting point for PGM model and preparation for learning part.

LC

Feb 2, 2019

Very great course! A lot of things have been learnt. The lectures, quiz and assignments clear up all key concepts. Especially, assignments are wonderful!

From the lesson

Inference in Temporal Models

In this brief lesson, we discuss some of the complexities of applying some of the exact or approximate inference algorithms that we learned earlier in this course to dynamic Bayesian networks.

Taught By

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    Daphne Koller

    Professor

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