Linear Convergence of the Frank-Wolfe Algorithm over Product Polytopes

Iommazzo, Gabriele, Martínez-Rubio, David, Criado, Francisco, Wirth, Elias, Pokutta, Sebastian

arXiv.org Artificial Intelligence 

We study the linear convergence of Frank-Wolfe algorithms over product polytopes. We analyze two condition numbers for the product polytope, namely the \emph{pyramidal width} and the \emph{vertex-facet distance}, based on the condition numbers of individual polytope components. As a result, for convex objectives that are $μ$-Polyak-Łojasiewicz, we show linear convergence rates quantified in terms of the resulting condition numbers. We apply our results to the problem of approximately finding a feasible point in a polytope intersection in high-dimensions, and demonstrate the practical efficiency of our algorithms through empirical results.

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