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A new efficient primal dual simplex algorithm

机译:一种新的高效原始对偶单纯形算法

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The purpose of this paper is to present a revised primal dual simplex algorithm (RPDSA) for linear programming problems. RPDSA has interesting theoretical properties. The advantages of the new algorithm are the simplicity of implementation, low computational overhead and surprisingly good computational performance. The algorithm can be combined with interior point methods to move from an interior point to a basic optimal solution. The new algorithm always proved to be more efficient than the classical simplex algorithm on our test problems. Numerical experiments on randomly generated sparse linear problems are presented to verify the practical value of RPDSA. The results are very promising. In particular, they reveal that RPDSA is up to 146 times faster in terms of number of iterations and 94 times faster in terms of CPU time than the original simplex algorithm (SA) on randomly generated problems of size 1200 x 1200 and density 2.5%.
机译:本文的目的是针对线性规划问题提出一种改进的原始对偶单纯形算法(RPDSA)。 RPDSA具有有趣的理论特性。新算法的优点是实现简单,计算开销低以及令人惊讶的良好计算性能。该算法可以与内部点方法结合使用,以从内部点转换为基本的最优解。在我们的测试问题上,新算法总是比经典单纯形算法更有效。通过对随机产生的稀疏线性问题进行数值实验,验证了RPDSA的实用价值。结果是非常有希望的。特别是,他们揭示了在随机生成的大小为1200 x 1200和密度为2.5%的问题上,RPDSA的迭代次数比原始单纯形算法(SA)快146倍,CPU时间快94倍。

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