Robust Graph Regularized Nonnegative Matrix Factorization for Clustering

Author:

Peng Chong1,Kang Zhao1,Hu Yunhong2,Cheng Jie3,Cheng Qiang1

Affiliation:

1. Southern Illinois University at Carbondale, Carbondale, IL

2. Yuncheng University, Shanxi Province, China

3. University of Hawaii at Hilo, Hilo, HI

Abstract

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.

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science

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1. Inter- and intra-hypergraph regularized nonnegative matrix factorization with hybrid constraints;Engineering Applications of Artificial Intelligence;2024-04

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3. Global and local similarity learning in multi-kernel space for nonnegative matrix factorization;Knowledge-Based Systems;2023-11

4. A late fusion scheme for multi-graph regularized NMF;Machine Vision and Applications;2023-09-05

5. Subspace Clustering via Adaptive Non-Negative Representation Learning and Its Application to Image Segmentation;IEEE Transactions on Circuits and Systems for Video Technology;2023-08

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