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Statistical distance / Convex analysis / Probability distributions / Mathematical optimization / Bregman divergence / Normal distribution / Divergence / KullbackLeibler divergence / Convex function / Gamma distribution / Convex conjugate / Symbol
Date: 2008-02-13 00:22:37
Statistical distance
Convex analysis
Probability distributions
Mathematical optimization
Bregman divergence
Normal distribution
Divergence
KullbackLeibler divergence
Convex function
Gamma distribution
Convex conjugate
Symbol

c 2007 Society for Industrial and Applied Mathematics  SIAM J. MATRIX ANAL. APPL. Vol. 29, No. 4, pp. 1120–1146

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