Skip to yearly menu bar Skip to main content


Poster

Stochastic Frank-Wolfe for Composite Convex Minimization

Francesco Locatello · Alp Yurtsever · Olivier Fercoq · Volkan Cevher

East Exhibition Hall B, C #166

Keywords: [ Convex Optimization ] [ Optimization ] [ Stochastic Methods ] [ Algorithms -> Online Learning; Algorithms ]


Abstract:

A broad class of convex optimization problems can be formulated as a semidefinite program (SDP), minimization of a convex function over the positive-semidefinite cone subject to some affine constraints. The majority of classical SDP solvers are designed for the deterministic setting where problem data is readily available. In this setting, generalized conditional gradient methods (aka Frank-Wolfe-type methods) provide scalable solutions by leveraging the so-called linear minimization oracle instead of the projection onto the semidefinite cone. Most problems in machine learning and modern engineering applications, however, contain some degree of stochasticity. In this work, we propose the first conditional-gradient-type method for solving stochastic optimization problems under affine constraints. Our method guarantees O(k^{-1/3}) convergence rate in expectation on the objective residual and O(k^{-5/12}) on the feasibility gap.

Live content is unavailable. Log in and register to view live content