Sparse Accelerated Exponential Weights
Abstract
We consider the stochastic optimization problem where a convex function is minimized observing recursively the gradients. We introduce SAEW, a new procedure that accelerates exponential weights procedures with the slow rate to procedures achieving the fast rate . Under the strong convexity of the risk, we achieve the optimal rate of convergence for approximating sparse parameters in . The acceleration is achieved by using successive averaging steps in an online fashion. The procedure also produces sparse estimators thanks to additional hard threshold steps.
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