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Quadratic nonnegative matrix factorization

机译:二次非负矩阵分解

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摘要

In Nonnegative Matrix Factorization (NMF), a nonnegative matrix is approximated by a product of lower-rank factorizing matrices. Most NMF methods assume that each factorizing matrix appears only once in the approximation, thus the approximation is linear in the factorizing matrices. We present a new class of approximative NMF methods, called Quadratic Nonnegative Matrix Factorization (QNMF), where some factorizing matrices occur twice in the approximation. We demonstrate QNMF solutions to four potential pattern recognition problems in graph partitioning, two-way clustering, estimating hidden Markov chains, and graph matching. We derive multiplicative algorithms that monotonically decrease the approximation error under a variety of measures. We also present extensions in which one of the factorizing matrices is constrained to be orthogonal or stochastic. Empirical studies show that for certain application scenarios, QNMF is more advantageous than other existing nonnegative matrix factorization methods.
机译:在非负矩阵分解(NMF)中,非负矩阵由低阶分解矩阵的乘积近似。大多数NMF方法假定每个分解矩阵在逼近中仅出现一次,因此在分解矩阵中该逼近是线性的。我们提出了一类新的近似NMF方法,称为二次非负矩阵因式分解(QNMF),其中一些因式分解矩阵在近似中出现两次。我们展示了QNMF解决方案,用于解决图分区,双向聚类,估计隐马尔可夫链和图匹配中的四个潜在模式识别问题。我们推导了乘法算法,该算法在各种度量下单调减小了近似误差。我们还提出了扩展,其中因式分解矩阵之一被约束为正交或随机的。实证研究表明,对于某些应用场景,QNMF比其他现有的非负矩阵分解方法更具优势。

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