Conjugate Gradients Acceleration of Coordinate Descent for Linear Systems

被引:0
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作者
Dan Gordon
机构
[1] University of Haifa,Department of Computer Science
来源
Journal of Scientific Computing | 2023年 / 96卷
关键词
Coordinate descent; CD; CGCD; CGMN; Conjugate gradients acceleration; Gauss–Seidel; Kaczmarz algorithm; Linear systems; Matrix inversion; Multiple right-hand-sides; Parallelism; 65B99; 65F10; 65F20;
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摘要
This paper introduces a conjugate gradients (CG) acceleration of the coordinate descent algorithm (CD) for linear systems. It is shown that the Kaczmarz algorithm (KACZ) can simulate CD exactly, so CD can be accelerated by CG similarly to the CG acceleration of KACZ (Björck and Elfving in BIT 19:145–163, 1979). Experimental results were carried out on large sets of problems of reconstructing bandlimited functions from random sampling. The randomness causes extreme variance between different instances of these problems, thus causing extreme variance in the advantage of CGCD over CD. The reduction of the number of iterations by CGCD varies from about 50–90% and beyond. The implementation of CGCD is simple. CGCD can also be used for the parallel solution of linear systems derived from partial differential equations, and for the efficient solution of multiple right-hand-side problems and matrix inversion.
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