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Probability and statistics / Statistics / Statistical theory / Bayesian network / Bayesian inference / Statistical hypothesis testing / Twenty Questions / Bayesian programming
Date: 2016-05-13 20:46:15
Probability and statistics
Statistics
Statistical theory
Bayesian network
Bayesian inference
Statistical hypothesis testing
Twenty Questions
Bayesian programming

Searching large hypothesis spaces by asking questions Alexander N. Cohen () Brenden M. Lake () Hunter College High School

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Source URL: cims.nyu.edu

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