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首页> 外文期刊>Neural Networks, IEEE Transactions on >Unified Development of Multiplicative Algorithms for Linear and Quadratic Nonnegative Matrix Factorization
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Unified Development of Multiplicative Algorithms for Linear and Quadratic Nonnegative Matrix Factorization

机译:线性和二次非负矩阵分解的乘法算法的统一开发

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摘要

Multiplicative updates have been widely used in approximative nonnegative matrix factorization (NMF) optimization because they are convenient to deploy. Their convergence proof is usually based on the minimization of an auxiliary upper-bounding function, the construction of which however remains specific and only available for limited types of dissimilarity measures. Here we make significant progress in developing convergent multiplicative algorithms for NMF. First, we propose a general approach to derive the auxiliary function for a wide variety of NMF problems, as long as the approximation objective can be expressed as a finite sum of monomials with real exponents. Multiplicative algorithms with theoretical guarantee of monotonically decreasing objective function sequence can thus be obtained. The solutions of NMF based on most commonly used dissimilarity measures such as $alpha$ - and $beta$-divergence as well as many other more comprehensive divergences can be derived by the new unified principle. Second, our method is extended to a nonseparable case that includes e.g., $gamma$-divergence and Rényi divergence. Third, we develop multiplicative algorithms for NMF using second-order approximative factorizations, in which each factorizing matrix may appear twice. Preliminary numerical experiments demonstrate that the multiplicative algorithms developed using the proposed procedure can achieve satisfactory Karush–Kuhn–Tucker optimality. We also demonstrate NMF problems where algorithms by the conventional method fail to guarantee descent at each iteration but those by our principle are immune to such violation.
机译:由于乘法更新易于部署,因此已广泛用于近似非负矩阵分解(NMF)优化中。它们的收敛性证明通常基于辅助上限函数的最小化,但是该辅助上限函数的构造仍然是特定的,并且仅可用于有限类型的相异性度量。在这里,我们在为NMF开发收敛乘法算法方面取得了重大进展。首先,我们提出了一种通用方法来推导各种NMF问题的辅助函数,只要近似目标可以表示为具有实指数的单项式的有限和。因此,可以获得理论上保证单调递减目标函数序列的乘法算法。可以通过新的统一原理得出基于最常用的相异性度量(例如$ alpha $和$ beta $ -divergence以及许多其他更全面的分歧)的NMF解。其次,我们的方法扩展到了不可分的情况,例如,包括$ gamma $-发散和Rényi发散。第三,我们使用二阶近似因式分解为NMF开发乘法算法,其中每个因式分解矩阵可能出现两次。初步的数值实验表明,使用所提出的程序开发的乘法算法可以实现令人满意的Karush–Kuhn–Tucker最优性。我们还演示了NMF问题,其中传统方法的算法无法保证每次迭代的下降,但是我们的原理可以避免这种违反。

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