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Using Genetic algorithm to enhance nonnegative matrix factorization initialization

机译:使用遗传算法增强非负矩阵分解初始化

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Recently, there is a growing interest to improve Non-negative Matrix Factorization (NMF) performance by developing efficient initialization methods. The aim of this paper is to estimate initial values for NMF components using Genetic algorithms (GAs). As far as NMF methods suffer from lack of convexity, the proposed method, here called NMF_GA can find a near optimal solution to initialize the NMF components. The proposed method was applied to JAFFE facial expression dataset. Results achieved by GA-NMF were compared to vast variety of NMF initialization methods and the supremacy of the obtained results showed the effectiveness of our GA-NMF method.
机译:最近,人们越来越关注通过开发有效的初始化方法来提高非负矩阵分解(NMF)性能。本文的目的是使用遗传算法(GA)估算NMF组件的初始值。就NMF方法缺乏凸性而言,所提出的方法(这里称为NMF_GA)可以找到一种接近最优的解决方案来初始化NMF分量。将该方法应用于JAFFE面部表情数据集。将GA-NMF所获得的结果与各种NMF初始化方法进行了比较,所获得的结果的优越性证明了我们的GA-NMF方法的有效性。

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