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A Practical Riemannian Algorithm for Computing Dominant Generalized Eigenspace

机译:一种计算主导广义eIgenspace的实用riemannian算法

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Dominant generalized eigenspace computation, concerned with how to find one of the top-k generalized eigenspaces of a pair of real symmetric matrices, is one of the fundamental problems in scientific computing, data analysis, and statistics. In this work, we propose a practical Riemannian algorithm based on the first-order optimization on generalized Stiefel manifolds while efficiently leveraging second-order information. Particularly, we use inexact Riemannian gradients which result from running a fast least-squares solver to approximate matrix multiplications for avoiding costly matrix inversions involved therein. We also conduct a theoretical analysis that is different than existing ones, achieving a unified linear convergence rate regardless of the conventional generalized eigenvalue gap which is the key parameter to the currently dichotomized analysis: gap-dependent or gap-free. The resulting linear rate, albeit not optimal, remains valid in full generality. Despite the simplicity, empirically, our algorithm as a block generalized eigensolver remarkably outperforms existing solvers.
机译:主导广义的eIGenspace计算,关注如何找到一对真正对称矩阵的顶级广义矩形的一个,是科学计算,数据分析和统计中的基本问题之一。在这项工作中,我们提出了一种基于广义Stiefel歧管的一阶优化的实用riemananian算法,同时有效地利用二阶信息。特别地,我们使用不适的riemannian梯度,该梯度是运行快速最小二乘求解器以近似矩阵乘法,以避免其中涉及的昂贵的矩阵逆转。我们还开展了与现有的理论分析,其不同,无论是传统的广义特征值差距如何,这是当前二分析分析的关键参数:间隙依赖性或间隙。由此产生的线性速率,尽管没有最佳,但在完全一般性中保持有效。尽管经验,凭经质,我们的算法作为块广义的Eigensolver非常优于现有求解器。

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