An Accelerated Accuracy-enhanced Randomized Singular Value Decomposition for Factorizing Matrices with Low-rank Structure

Joseph Roger Arhin, Francis Sam, K. Coker, Toufic Seini
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Abstract

Big data has in recent years gained ground in many scientific and engineering problems. It seems to some extent prohibitive for traditional matrix decomposition methods (i.e. QR, SVD, EVD, etc.) to handle such large-scale problems involving data matrix. Many researchers have developed several algorithms to decompose such big data matrices. An accuracy-enhanced randomized singular value decomposition method (referred to as AE-RSVDM) with orthonormalization recently becomes the state-of-the-art to factorize large data matrices with satisfactory speed and accuracy. In our paper, low-rank matrix approximations based on randomization are studied, with emphasis on accelerating the computational efficiency on large data matrices. By this, we accelerate the AE-RSVDM with modified normalized power iteration to result in an accelerated version. The accelerated version is grounded on a two-stage scheme. The first stage seeks to find the range of a sketch matrix which involves a Gaussian random matrix. A low-dimensional space is then created from the high-dimensional data matrix via power iteration. Numerical experiments on matrices of different sizes demonstrate that our accelerated variant achieves speedups while attaining the same reconstruction error as the AE-RSVDM with orthonormalization. And with data from Google art project, we have made known the computational speed-up of the accelerated variant over the AE-RSVDM algorithm for decomposing large data matrices with low-rank form.
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低秩结构矩阵分解的加速精度增强随机奇异值分解
近年来,大数据在许多科学和工程问题上取得了进展。传统的矩阵分解方法(QR、SVD、EVD等)似乎在一定程度上难以处理这种涉及数据矩阵的大规模问题。许多研究人员已经开发了几种算法来分解这种大数据矩阵。一种精度增强的随机奇异值分解方法(简称AE-RSVDM)是近年来以令人满意的速度和精度分解大型数据矩阵的最新方法。本文研究了基于随机化的低秩矩阵逼近,重点是提高大数据矩阵的计算效率。在此基础上,采用改进的归一化功率迭代对AE-RSVDM进行加速,得到加速版本。加速版基于两阶段方案。第一阶段寻求找到包含高斯随机矩阵的草图矩阵的范围。然后通过幂次迭代从高维数据矩阵创建一个低维空间。在不同大小的矩阵上进行的数值实验表明,我们的加速变体在获得与正规一化AE-RSVDM相同的重构误差的同时实现了加速。通过谷歌艺术项目的数据,我们已经知道了加速变体在分解具有低秩形式的大数据矩阵时比AE-RSVDM算法的计算速度。
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0.60
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2
期刊介绍: The “Italian Journal of Pure and Applied Mathematics” publishes original research works containing significant results in the field of pure and applied mathematics.
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