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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Non-negative matrix factorization: Ill-posedness and a geometric algorithm
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Non-negative matrix factorization: Ill-posedness and a geometric algorithm

机译:非负矩阵分解:病态和几何算法

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摘要

Non-negative matrix factorization (NMF) has been proposed as a mathematical tool for identifying the components of a dataset. However, popular NMF algorithms tend to operate slowly and do not always identify the components which are most representative of the data. In this paper, an alternative algorithm for performing NMF is developed using the geometry of the problem. The computational costs of the algorithm are explored, and it is shown to successfully identify the components of a simulated dataset. The development of the geometric algorithm framework illustrates the ill-posedness of the NMF problem and suggests that NMF is not sufficiently constrained to be applied successfully outside of a particular class of problems.
机译:非负矩阵分解(NMF)已被提出作为一种数学工具来识别数据集的组成部分。但是,流行的NMF算法往往运行缓慢,并且并不总是识别出最能代表数据的组件。在本文中,使用问题的几何形状开发了一种用于执行NMF的替代算法。探索了算法的计算成本,并证明了该算法可成功识别模拟数据集的组成部分。几何算法框架的发展说明了NMF问题的不适性,并表明NMF没有受到足够的约束,无法在特定类别的问题之外成功应用。

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