Generalization Error Bounds for Aggregation by Mirror Descent with Averaging
Juditsky, Anatoli, Nazin, Alexander, Tsybakov, Alexandre, Vayatis, Nicolas
–Neural Information Processing Systems
For this purpose, we propose a stochastic procedure, the mirror descent, which performs gradient descent in the dual space. The generated estimates are additionally averaged in a recursive fashion with specific weights. Mirror descent algorithms have been developed in different contexts and they are known to be particularly efficient in high dimensional problems. Moreover their implementation is adapted to the online setting. The main result of the paper is the upper bound on the convergence rate for the generalization error.
Neural Information Processing Systems
Dec-31-2006
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