A New Parallel Symmetric Tridiagonal Eigensolver Based on Bisection and Inverse Iteration Algorithms for Shared-Memory Multi-core Processors

H. Ishigami, Kinji Kimura, Yoshimasa Nakamura
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引用次数: 3

Abstract

In order to accelerate the subset computation of eigenpairs for real symmetric tridiagonal matrices on shared-memory multi-core processors, a parallel symmetric tridiagonal eigensolver is proposed, which computes eigenvalues of target matrices using the parallel bisection algorithm and computes the corresponding eigenvectors using the block inverse iteration algorithm with reorthogonalization (BIR algorithm). The BIR algorithm is based on the simultaneous inverse iteration (SI) algorithm, which is a variant of the inverse iteration algorithm, and is introduced to a block parameter. Since the BIR algorithm is mainly composed of the matrix multiplications, the proposed eigensolver is expected to accelerate the computation of eigenpairs even on massively parallel computers. Numerical experiments on shared-memory multi-core processors show that the BIR algorithm is faster than the SI algorithm and achieves the good parallel efficiency. In addition, many cases of the numerical experiments also show that the proposed eigensolver, including the parallel bisection and the BIR algorithm, is more accurate than the parallel implementation of other eigensolvers, such as the QR iteration algorithm, the divide-and-conquer algorithm, and the multiple relatively robust representations algorithm.
基于对分和逆迭代算法的共享内存多核处理器并行对称三对角特征求解器
为了加快共享内存多核处理器上实对称三对角矩阵特征对子集的计算速度,提出了一种并行对称三对角特征求解器,该算法利用并行对角算法计算目标矩阵的特征值,利用带重正交化的块逆迭代算法(BIR算法)计算对应的特征向量。BIR算法是在同步逆迭代(SI)算法的基础上提出的,SI算法是逆迭代算法的一种变体,并引入了块参数。由于BIR算法主要由矩阵乘法组成,因此所提出的特征求解器有望在大规模并行计算机上加速特征对的计算。在共享内存多核处理器上的数值实验表明,BIR算法比SI算法速度快,并取得了良好的并行效率。此外,许多案例的数值实验也表明,所提出的特征解算器(包括平行平分和BIR算法)比其他特征解算器(如QR迭代算法、分治算法和多重相对鲁棒表示算法)的并行实现精度更高。
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