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Poster

Optimal Stochastic and Online Learning with Individual Iterates

Yunwen Lei · Peng Yang · Ke Tang · Ding-Xuan Zhou

East Exhibition Hall B + C #164

Keywords: [ Theory ] [ Learning Theory ] [ Algorithms ] [ Online Learning ]


Abstract:

Stochastic composite mirror descent (SCMD) is a simple and efficient method able to capture both geometric and composite structures of optimization problems in machine learning. Existing strategies require to take either an average or a random selection of iterates to achieve optimal convergence rates, which, however, can either destroy the sparsity of solutions or slow down the practical training speed. In this paper, we propose a theoretically sound strategy to select an individual iterate of the vanilla SCMD, which is able to achieve optimal rates for both convex and strongly convex problems in a non-smooth learning setting. This strategy of outputting an individual iterate can preserve the sparsity of solutions which is crucial for a proper interpretation in sparse learning problems. We report experimental comparisons with several baseline methods to show the effectiveness of our method in achieving a fast training speed as well as in outputting sparse solutions.

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