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NIPS   2000
Wall of Fame | Most Viewed NIPS-2000 Paper
NIPS
2000
8 years 9 months ago
On Reversing Jensen's Inequality
Jensen's inequality is a powerful mathematical tool and one of the workhorses in statistical learning. Its applications therein include the EM algorithm, Bayesian estimation ...
Tony Jebara, Alex Pentland
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