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Universal a posteriori metrics game
Emmanuel Abbe
, Rethnakaran Pulikkoonattu
Electrical and Computer Engineering
Center for Statistics & Machine Learning
Mathematics
Research output
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Chapter in Book/Report/Conference proceeding
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Conference contribution
1
Scopus citations
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Mathematics
Worst Case
100%
Mutual Information
100%
Posteriori
100%
Channel Input
100%
Maximum Likelihood
50%
Uniform Distribution
50%
Engineering
Metrics
100%
Binary Input
75%
Mutual Information
50%
Maximum Likelihood
25%
Channel Output
25%
Computer Science
Mutual Information
100%
maximum-likelihood
50%
Uniform Distribution
50%
Keyphrases
Binary Output
50%