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Faster Algorithms for Rectangular Matrix Multiplication

机译:矩形矩阵乘法的更快算法

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摘要

Let α be the maximal value such that the product of an n × n~α matrix by an n~α × n matrix can be computed with n~(2+o(1)) arithmetic operations. In this paper we show that α > 0.30298, which improves the previous record α > 0.29462 by Coppersmith (Journal of Complexity, 1997). More generally, we construct a new algorithm for multiplying an n × n~k matrix by an n~k × n matrix, for any value k ≠ 1. The complexity of this algorithm is better than all known algorithms for rectangular matrix multiplication. In the case of square matrix multiplication (i.e., for k = 1), we recover exactly the complexity of the algorithm by Coppersmith and Winograd (Journal of Symbolic Computation, 1990). These new upper bounds can be used to improve the time complexity of several known algorithms that rely on rectangular matrix multiplication. For example, we directly obtain a O(n~2.5302)-time algorithm for the all-pairs shortest paths problem over directed graphs with small integer weights, improving over the O (n~2.575)-time algorithm by Zwick (JACM 2002), and also improve the time complexity of sparse square matrix multiplication.
机译:令α为最大值,以便可以使用n〜(2 + o(1))算术运算来计算n×n〜α矩阵与n〜α×n矩阵的乘积。在本文中,我们表明α> 0.30298,它改善了Coppersmith先前的记录α> 0.29462(复杂性杂志,1997)。更笼统地说,我们构造了一种新算法,对于任何值k≠1,将n×n〜k矩阵与n〜k×n矩阵相乘。该算法的复杂性优于所有已知的矩形矩阵乘法算法。在平方矩阵乘法的情况下(即对于k = 1),我们精确地恢复了Coppersmith和Winograd的算法的复杂性(Journal of Symbolic Computation,1990)。这些新的上限可用于改善几种依赖矩形矩阵乘法的已知算法的时间复杂度。例如,我们直接获得了具有较小整数权重的有向图上所有对最短路径问题的O(n〜2.5302)时间算法,比Zwick的O(n〜2.575)时间算法有所改进(JACM 2002) ,还可以提高稀疏方矩阵乘法的时间复杂度。

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  • 来源
    《電子情報通信学会技術研究報告》 |2012年第199期|41-48|共8页
  • 作者

    Francois Le Gall;

  • 作者单位

    Department of Computer Science Graduate School of Information Science and Technology The University of Tokyo;

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  • 正文语种 eng
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  • 入库时间 2022-08-18 00:29:25

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