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A parallel hierarchical blocked adaptive cross approximation algorithm

机译:并行分层阻塞自适应交叉近似算法

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摘要

This article presents a low-rank decomposition algorithm based on subsampling of matrix entries. The proposed algorithm first computes rank-revealing decompositions of submatrices with a blocked adaptive cross approximation (BACA) algorithm, and then applies a hierarchical merge operation via truncated singular value decompositions (H-BACA). The proposed algorithm significantly improves the convergence of the baseline ACA algorithm and achieves reduced computational complexity compared to the traditional decompositions such as rank-revealing QR. Numerical results demonstrate the efficiency, accuracy, and parallel scalability of the proposed algorithm.
机译:本文介绍了基于矩阵条目的uplappling的低秩分解算法。所提出的算法首先计算具有阻塞的自适应串近似(BACA)算法的子序列的排名分解,然后通过截短的奇异值分解(H-BACA)应用分层合并操作。所提出的算法显着提高了基线ACA算法的收敛性,与传统分解相比,诸如Rank-lepsion QR等传统分解相比,实现了减少的计算复杂性。数值结果证明了所提出的算法的效率,准确性和平行可扩展性。

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