基于Kronecker乘积秩展开的嵌套双线性算法的通信下界

IF 2.5 1区 数学 Q2 COMPUTER SCIENCE, THEORY & METHODS
Caleb Ju, Yifan Zhang, Edgar Solomonik
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引用次数: 0

摘要

我们为嵌套双线性算法开发了内存层次结构中或处理器之间通信的下界,例如矩阵乘法的Strassen算法。我们建立在以前的框架之上,该框架通过使用秩扩展或矩阵的列的任何固定大小子集的最小秩,为编码双线性算法的三个矩阵中的每一个建立通信下界。与产生特定DAG的边界的其他方法相比,该框架为与给定双线性算法的执行相对应的一类依赖有向无环图(DAG)提供了下界。然而,我们的下限仅适用于不多次计算同一DAG节点的执行。两个双线性算法可以通过在它们的编码矩阵之间取Kronecker乘积来嵌套。我们的主要结果是由Kronecker乘积构造的矩阵的秩展开的下界,该下界是从Kronecker积的操作数的秩展开下界导出的。我们应用秩扩展下界来获得嵌套Toom-Cook卷积、Strassen算法和部分对称张量收缩的快速算法的新的通信下界。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Communication Lower Bounds for Nested Bilinear Algorithms via Rank Expansion of Kronecker Products

We develop lower bounds on communication in the memory hierarchy or between processors for nested bilinear algorithms, such as Strassen’s algorithm for matrix multiplication. We build on a previous framework that establishes communication lower bounds by use of the rank expansion, or the minimum rank of any fixed size subset of columns of a matrix, for each of the three matrices encoding a bilinear algorithm. This framework provides lower bounds for a class of dependency directed acyclic graphs (DAGs) corresponding to the execution of a given bilinear algorithm, in contrast to other approaches that yield bounds for specific DAGs. However, our lower bounds only apply to executions that do not compute the same DAG node multiple times. Two bilinear algorithms can be nested by taking Kronecker products between their encoding matrices. Our main result is a lower bound on the rank expansion of a matrix constructed by a Kronecker product derived from lower bounds on the rank expansion of the Kronecker product’s operands. We apply the rank expansion lower bounds to obtain novel communication lower bounds for nested Toom-Cook convolution, Strassen’s algorithm, and fast algorithms for contraction of partially symmetric tensors.

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来源期刊
Foundations of Computational Mathematics
Foundations of Computational Mathematics 数学-计算机:理论方法
CiteScore
6.90
自引率
3.30%
发文量
46
审稿时长
>12 weeks
期刊介绍: Foundations of Computational Mathematics (FoCM) will publish research and survey papers of the highest quality which further the understanding of the connections between mathematics and computation. The journal aims to promote the exploration of all fundamental issues underlying the creative tension among mathematics, computer science and application areas unencumbered by any external criteria such as the pressure for applications. The journal will thus serve an increasingly important and applicable area of mathematics. The journal hopes to further the understanding of the deep relationships between mathematical theory: analysis, topology, geometry and algebra, and the computational processes as they are evolving in tandem with the modern computer. With its distinguished editorial board selecting papers of the highest quality and interest from the international community, FoCM hopes to influence both mathematics and computation. Relevance to applications will not constitute a requirement for the publication of articles. The journal does not accept code for review however authors who have code/data related to the submission should include a weblink to the repository where the data/code is stored.
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