Nonparametric Bayesian Methods: Models, Algorithms, and Applications IV
Tamara Broderick, MIT
https://simons.berkeley.edu/talks/tamara-broderick-michael-jordan-01-25-2017-4
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Tags: Tamara Broderick
Simons Institute
Theory of Computing
Theory of Computation
Theoretical Computer Science
Computer Science
UC Berkeley
Foundations of Machine Learning Boot Camp