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Nonnegative Matrix Factorization Using Projected Gradient Algorithms with Sparseness Constraints

机译:使用具有稀疏约束的投影梯度算法的非负矩阵分解

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Recently projected gradient (PG) approaches have found many applications in solving the minimization problems underlying nonnegative matrix factorization (NMF). NMF is a linear representation of data that could lead to sparse result of natural images. To improve the parts-based representation of data some sparseness constraints have been proposed. In this paper the efficiency and execution time of five different PG algorithms and the basic multiplicative algorithm for NMF are compared. The factorization is done for an existing and proposed sparse NMF and the results are compared for all these PG methods. To compare the algorithms the resulted factorizations are used for a hand-written digit classifier.
机译:最近预计的梯度(PG)方法已经找到了许多应用,用于解决非负矩阵分解(NMF)的最小化问题。 NMF是可以导致自然图像稀疏结果的数据的线性表示。为了改善基于零件的数据表示,已经提出了一些稀疏约束。在本文中,比较了五种不同PG算法的效率和执行时间和NMF的基本乘法算法。为现有的和提出的稀疏NMF进行分解,并将结果进行比较,以所有这些PG方法进行比较。要比较算法,所产生的分子用于手写的数字分类器。

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