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Clustering by Orthogonal Non-negative Matrix Factorization: A Sequential Non-convex Penalty Approach

机译:正交非负矩阵分解的聚类:顺序非凸惩罚方法

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The non-negative matrix factorization (NMF) model with an additional orthogonality constraint on one of the factor matrices, called the orthogonal NMF (ONMF), has been found to provide improved clustering performance over the K-means. The ONMF model is a challenging optimization problem due to the orthogonality constraint, and most of the existing methods directly deal with the constraint in its original form via various optimization techniques. In this paper, we propose an equivalent problem reformulation that transforms the orthogonality constraint into a set of norm-based non-convex equality constraints. We then apply a penalty approach to handle these non-convex constraints. The penalized formulation is smooth and has convex constraints, which is amenable to efficient computation. We analytically show that the penalized formulation will provide a feasible stationary point of the reformulated ONMF problem when the penalty is large. Numerical results show that the proposed method greatly outperforms the existing methods.
机译:已发现在因子矩阵之一上具有附加正交性约束的非负矩阵分解(NMF)模型,称为正交NMF(ONMF),可提供比K均值更高的聚类性能。由于正交性约束,ONMF模型是一个具有挑战性的优化问题,大多数现有方法都通过各种优化技术以其原始形式直接处理该约束。在本文中,我们提出了一个等效的问题重构,将正交性约束转换为一组基于范数的非凸等式约束。然后,我们采用惩罚方法来处理这些非凸约束。惩罚公式是平滑的,并且具有凸约束,这适合有效的计算。我们分析表明,当惩罚较大时,惩罚公式将为重新制定的ONMF问题提供可行的平稳点。数值结果表明,该方法大大优于现有方法。

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