论文标题

适应性特征表示的自适应加权非负基质分解

Adaptive Weighted Nonnegative Matrix Factorization for Robust Feature Representation

论文作者

Shen, Tingting, Li, Junhang, Tong, Can, He, Qiang, Li, Chen, Yao, Yudong, Teng, Yueyang

论文摘要

非负矩阵分解(NMF)已广泛用于降低机器学习的尺寸。但是,传统的NMF无法正确处理异常值,因此对噪声敏感。为了提高NMF的鲁棒性,本文提出了一种自适应加权NMF,该NMF引入了权重以强调每个数据点的不同重要性,因此算法对噪声数据的敏感性降低了。它与使用缓慢生长相似性度量的现有强大NMF大不相同。具体而言,提出了两种策略来实现这一目标:模糊加权技术和熵加权技术,这两者都带来了具有简单形式的迭代解决方案。实验结果表明,新方法在具有噪声的几个真实数据集上具有更健壮的特征表示,而不是进行噪声。

Nonnegative matrix factorization (NMF) has been widely used to dimensionality reduction in machine learning. However, the traditional NMF does not properly handle outliers, so that it is sensitive to noise. In order to improve the robustness of NMF, this paper proposes an adaptive weighted NMF, which introduces weights to emphasize the different importance of each data point, thus the algorithmic sensitivity to noisy data is decreased. It is very different from the existing robust NMFs that use a slow growth similarity measure. Specifically, two strategies are proposed to achieve this: fuzzier weighted technique and entropy weighted regularized technique, and both of them lead to an iterative solution with a simple form. Experimental results showed that new methods have more robust feature representation on several real datasets with noise than exsiting methods.

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