A boundary-point LP solution method and its application to dense linear programs

Chanaka Edirisinghe, W. Ziemba
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Abstract

This paper presents a linear programming solution method that generates a sequence of boundary-points belonging to faces of the feasible polyhedron. The method is based on a steepest descent search by iteratively optimising over a two-dimensional cross section of the polyhedron. It differs from extreme point algorithms such as the simplex method in that optimality is detected by identifying an optimal face of the polyhedron which is not necessarily an extreme point. It also differs from the polynomial-time methods such as the ellipsoid algorithm or projective scaling method that avoids the boundary of the feasible polyhedron. Limited computational analysis with an experimental code of the method, EZLP, indicates that our method performs quite well in total solution time when the number of variables and the density of the constraint matrix increase.
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边界点LP解法及其在密集线性规划中的应用
本文提出了一种线性规划求解方法,该方法生成了一组属于可行多面体的面的边点序列。该方法基于最陡下降搜索,通过迭代优化多面体的二维截面。它与单纯形法等极值点算法的不同之处在于,通过识别多面体的最优面来检测最优性,而多面体的最优面不一定是极值点。它也不同于多项式时间方法,如椭球算法或投影标度法,避免了可行多面体的边界。有限的计算分析表明,当约束矩阵的变量数和密度增加时,该方法在总求解时间上有很好的表现。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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