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Fast Projection-based Methods for the Least Squares Nonnegative Matrix Approximation Problem

机译:基于快速投影的最小二乘非负矩阵逼近问题

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摘要

Nonnegative matrix approximation (NNMA) is a popular matrix decomposition technique that has proven to be useful across a diverse variety of fields with applications ranging from document analysis and image processing to bioinformatics and signal processing. Over the years, several algorithms for NNMA have been proposed, e.g. Lee and Seungamp;lsquo;s multiplicative updates, alternating least squares (ALS), and gradient descent-based procedures. However, most of these procedures suffer from either slow convergence, numerical instability, or at worst, serious theoretical drawbacks. In this paper, we develop a new and improved algorithmic framework for the least-squares NNMA problem, which is not only theoretically well-founded, but also overcomes many deficiencies of other methods. Our framework readily admits powerful optimization techniques and as concrete realizations we present implementations based on the Newton, BFGS and conjugate gradient methods. Our algorithms provide numerical resu lts supe rior to both Lee and Seungamp;lsquo;s method as well as to the alternating least squares heuristic, which was reported to work well in some situations but has no theoretical guarantees[1]. Our approach extends naturally to include regularization and box-constraints without sacrificing convergence guarantees. We present experimental results on both synthetic and real-world datasets that demonstrate the superiority of our methods, both in terms of better approximations as well as computational efficiency.
机译:非负矩阵逼近(NNMA)是一种流行的矩阵分解技术,已被证明可用于从文档分析和图像处理到生物信息学和信号处理的各种领域。多年来,已经提出了几种用于NNMA的算法,例如Lee和Seungamp; lsquo;乘法更新,交替最小二乘(ALS)和基于梯度下降的过程。但是,这些程序中的大多数都受累于收敛速度慢,数值不稳定或在最坏的情况下存在严重的理论缺陷。在本文中,我们为最小二乘NNMA问题开发了一种新的和改进的算法框架,这不仅在理论上是有根据的,而且还克服了其他方法的许多缺陷。我们的框架容易接受强大的优化技术,作为具体的实现,我们介绍基于牛顿,BFGS和共轭梯度法的实现。我们的算法为Lee和Seungamp; s方法以及交替最小二乘启发式方法提供了数值结果,据报道这种方法在某些情况下效果很好,但是没有理论上的保证[1]。我们的方法很自然地扩展到包括正则化和框约束,而不会牺牲收敛保证。我们在合成数据集和实际数据集上均给出了实验结果,从更好的近似值和计算效率的角度证明了我们方法的优越性。

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