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Enhancing the scalability of selected inversion factorization algorithms in genomic prediction

机译:在基因组预测中提高所选反因子分解算法的可扩展性

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摘要

A parallel distributed-memory approach for the exact calculation of selected entries of the inverse of a matrix arising in a Best Linear Unbiased Estimation (BLUE) problem in genomic prediction is presented. The particular structure of the matrices involved in this stochastic process, consisting of sparse and dense blocks, requires a framework coupling sparse and dense linear algebra algorithms. Our approach exploits direct sparse techniques based on the Takahashi equations, coupled with distributed LU dense factorizations and Schur-complement computations. The algorithm is validated on several matrices on a Cray XC40 supercomputer. (C) 2017 Elsevier B.V. All rights reserved.
机译:提出了一种并行分布内存方法,用于精确计算基因组预测中的最佳线性无偏估计(BLUE)问题中出现的矩阵逆的选定项。由稀疏块和密集块组成的随机过程中涉及的矩阵的特殊结构,需要将稀疏和密集线性代数算法耦合在一起的框架。我们的方法利用基于Takahashi方程的直接稀疏技术,以及分布式LU密集因子分解和Schur-complement计算。该算法在Cray XC40超级计算机上的多个矩阵上得到了验证。 (C)2017 Elsevier B.V.保留所有权利。

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