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Robust Graph Regularized Nonnegative Matrix Factorization for Clustering

机译:鲁棒图正则化非负矩阵分解

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摘要

Matrix factorization is often used for data representation in many data mining and machine-learning problems. In particular, for a dataset without any negative entries, nonnegative matrix factorization (NMF) is often used to find a low-rank approximation by the product of two nonnegative matrices. With reduced dimensions, these matrices can be effectively used for many applications such as clustering. The existing methods of NMF are often afflicted with their sensitivity to outliers and noise in the data. To mitigate this drawback, in this paper, we consider integrating NMF into a robust principal component model, and design a robust formulation that effectively captures noise and outliers in the approximation while incorporating essential nonlinear structures. A set of comprehensive empirical evaluations in clustering applications demonstrates that the proposed method has strong robustness to gross errors and superior performance to current state-of-the-art methods.
机译:在许多数据挖掘和机器学习问题中,矩阵分解通常用于数据表示。特别是,对于没有任何负条目的数据集,通常使用非负矩阵分解(NMF)来查找两个非负矩阵乘积的低秩近似。通过减小尺寸,这些矩阵可以有效地用于许多应用程序,例如聚类。 NMF的现有方法经常受其对异常值和数据中噪声的敏感性的困扰。为了缓解此缺点,在本文中,我们考虑将NMF集成到鲁棒的主成分模型中,并设计一种鲁棒的公式,该公式可有效地近似捕获噪声和离群值,同时并入基本的非线性结构。一组在聚类应用中的综合经验评估表明,所提出的方法对严重错误具有很强的鲁棒性,并且与当前的最新技术方法相比具有优越的性能。

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