The minimum euclidean-norm point in a convex polytope: wolfe's combinatorial algorithm is exponential

STOC '18: Symposium on Theory of Computing Los Angeles CA USA June, 2018(2020)

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摘要
The complexity of Philip Wolfe's method for the minimum Euclidean-norm point problem over a convex polytope has remained unknown since he proposed the method in 1974. The method is important because it is used as a subroutine for one of the most practical algorithms for submodular function minimization. We present the first example that Wolfe's method takes exponential time. Additionally, we improve previous results to show that linear programming reduces in strongly polynomial time to the minimum norm point problem over a simplex.
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关键词
convex quadratic optimization,Wolfe's method,linear programming,strongly polynomial time algorithms,lower bounds
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