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 $\mu$-Polyak-{\L}ojasiewicz, 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.
翻译:本文研究了Frank-Wolfe算法在乘积多面体上的线性收敛性。基于各分量多面体的条件数,我们分析了乘积多面体的两个条件数——\emph{棱锥宽度}与\emph{顶点-面距离}。结果表明,对于满足$\mu$-Polyak-{\L}ojasiewicz性质的凸目标函数,其线性收敛速率可由所得条件数量化表征。我们将该结果应用于高维空间中多面体交集可行点的近似求解问题,并通过实证结果验证了所提算法的实际效率。