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Statistics / Education / Applied mathematics / Computational statistics / Statistical models / Graphical models / Bayesian statistics / Markov models / Bayesian network / Markov random field / Educational technology / Markov chain Monte Carlo
Date: 2016-02-29 18:06:04
Statistics
Education
Applied mathematics
Computational statistics
Statistical models
Graphical models
Bayesian statistics
Markov models
Bayesian network
Markov random field
Educational technology
Markov chain Monte Carlo

Course Syllabus: COMPSCI 688 Probabilistic Graphical Models – Spring 2016 Instructor: Prof. Brendan O’Connor (http://brenocon.com)

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