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Combining Interior-point and Pivoting Algorithms for Linear Programming

机译:结合内部点和枢轴算法进行线性规划

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摘要

We propose a new approach to combine linear programming (LP) interior-point and simplex pivoting algorithms. In any iteration of an interior-point algorithm we construct a related LP problem, which approximates the original problem, with a known (strictly) complementary primal-dual solution pair. Thus, we can apply Megiddo's (1991) pivoting procedure to compute an optimal basis for the approximate problem in strongly polynomial time. We show that, if the approximate problem is constructed from an interior-point iterate sufficiently close to the optimal face, then any optimal basis of the approximate problem is an optimal basis for the original problem. If the LP data are rational, the total number of interior-point iterations to create such a sufficient approximate problem is bounded by a polynomial in the data size. We develop a modification of Megiddo's procedure and discuss several implementation issues in solving the approximate problem. We also report encouraging computational results for this combined approach.
机译:我们提出了一种将线性规划(LP)内点和单纯形枢轴算法相结合的新方法。在内点算法的任何迭代中,我们都使用已知(严格)互补的原始对偶解对构造一个与原始问题近似的相关LP问题。因此,我们可以应用Megiddo(1991)的枢轴程序来计算强多项式时间内近似问题的最优基础。我们证明,如果近似问题是从足够接近最佳面的内点迭代构造的,则近似问题的任何最佳基础都是原始问题的最佳基础。如果LP数据是有理数,则创建此类足够近似问题的内点迭代总数受数据大小的多项式限制。我们对Megiddo的过程进行了修改,并讨论了解决近似问题时的几个实现问题。我们还报告了这种组合方法的令人鼓舞的计算结果。

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