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Stochastic Optimization with Importance Sampling for Regularized Loss Minimization

Published on Dec 05, 20152199 Views

Uniform sampling of training data has been commonly used in traditional stochastic optimization algorithms such as Proximal Stochastic Mirror Descent (prox-SMD) and Proximal Stochastic Dual Coordinate

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