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Graph regularized and sparse nonnegative matrix factorization with hard constraints for data representation

机译:具有数据约束的硬约束的图正则化和稀疏非负矩阵分解

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摘要

Nonnegative Matrix Factorization (NMF) as a popular technique for finding parts-based, linear representations of nonnegative data has been successfully applied in a wide range of applications. This is because it can provide components with physical meaning and interpretations, which is consistent with the psychological intuition of combining parts to form whole. For practical classification tasks, NMF ignores both the local geometry of data and the discriminative information of different classes. In addition, existing research results demonstrate that leveraging sparseness can greatly enhance the ability of the learning parts. Motivated by these advances aforementioned, we propose a novel matrix decomposition algorithm, called Graph regularized and Sparse Non-negative Matrix Factorization with hard Constraints (GSNMFC). It attempts to find a compact representation of the data so that further learning tasks can be facilitated. The proposed GSNMFC jointly incorporates a graph regularizer and hard prior label information as well as sparseness constraint as additional conditions to uncover the intrinsic geometrical and discriminative structures of the data space. The corresponding update solutions and the convergence proofs for the optimization problem are also given in detail. Experimental results demonstrate the effectiveness of our algorithm in comparison to the state-of-the-art approaches through a set of evaluations. (C) 2015 Elsevier B.V. All rights reserved.
机译:非负矩阵因式分解(NMF)作为查找基于零件的非负数据的线性表示的一种流行技术已成功应用于广泛的应用中。这是因为它可以提供具有物理意义和解释的组件,这与将零件组合成整体的心理直觉是一致的。对于实际的分类任务,NMF会同时忽略数据的局部几何形状和不同类别的区分信息。此外,现有研究结果表明,利用稀疏性可以大大增强学习部分的能力。基于上述这些进步,我们提出了一种新颖的矩阵分解算法,称为具有硬约束的图正则化和稀疏非负矩阵分解(GSNMFC)。它试图找到数据的紧凑表示形式,以便于进一步的学习任务。提出的GSNMFC结合了图正则化器和硬先验标签信息以及稀疏约束,作为揭示数据空间内在几何和判别结构的附加条件。还详细给出了相应的更新解和优化问题的收敛性证明。通过一组评估,实验结果证明了我们的算法与最新技术相比的有效性。 (C)2015 Elsevier B.V.保留所有权利。

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