New Bounds for Matrix Multiplication: from Alpha to Omega

16 Jul 2023  ·  Virginia Vassilevska Williams, Yinzhan Xu, Zixuan Xu, Renfei Zhou ·

The main contribution of this paper is a new improved variant of the laser method for designing matrix multiplication algorithms. Building upon the recent techniques of [Duan, Wu, Zhou, FOCS 2023], the new method introduces several new ingredients that not only yield an improved bound on the matrix multiplication exponent $\omega$, but also improve the known bounds on rectangular matrix multiplication by [Le Gall and Urrutia, SODA 2018]. In particular, the new bound on $\omega$ is $\omega\le 2.371552$ (improved from $\omega\le 2.371866$). For the dual matrix multiplication exponent $\alpha$ defined as the largest $\alpha$ for which $\omega(1,\alpha,1)=2$, we obtain the improvement $\alpha \ge 0.321334$ (improved from $\alpha \ge 0.31389$). Similar improvements are obtained for various other exponents for multiplying rectangular matrices.

PDF Abstract
No code implementations yet. Submit your code now

Categories


Data Structures and Algorithms Computational Complexity

Datasets


  Add Datasets introduced or used in this paper