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arxiv: 1711.06656 · v1 · submitted 2017-11-17 · 🧮 math.OC · cs.NA· stat.ML

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A Parallelizable Acceleration Framework for Packing Linear Programs

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classification 🧮 math.OC cs.NAstat.ML
keywords frameworklinearsolversprogramsusedaccelerationpackingprogramming
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This paper presents an acceleration framework for packing linear programming problems where the amount of data available is limited, i.e., where the number of constraints m is small compared to the variable dimension n. The framework can be used as a black box to speed up linear programming solvers dramatically, by two orders of magnitude in our experiments. We present worst-case guarantees on the quality of the solution and the speedup provided by the algorithm, showing that the framework provides an approximately optimal solution while running the original solver on a much smaller problem. The framework can be used to accelerate exact solvers, approximate solvers, and parallel/distributed solvers. Further, it can be used for both linear programs and integer linear programs.

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