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Statistical theory / Kullback–Leibler divergence / Vector calculus / Divergence / Normal distribution / Mixture model / Logarithm / Statistics / Geometry / Bregman divergence
Date: 2015-01-06 14:28:10
Statistical theory
Kullback–Leibler divergence
Vector calculus
Divergence
Normal distribution
Mixture model
Logarithm
Statistics
Geometry
Bregman divergence

The Bregman Variational Dual-Tree Framework Saeed Amizadeh Intelligent Systems Program University of Pittsburgh Pittsburgh, PA 15213

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