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Fast Hypergraph Regularized Nonnegative Tensor Ring Factorization Based on Low-Rank Approximation

Machine Learning 2021-09-07 v1 Numerical Analysis Numerical Analysis

Abstract

For the high dimensional data representation, nonnegative tensor ring (NTR) decomposition equipped with manifold learning has become a promising model to exploit the multi-dimensional structure and extract the feature from tensor data. However, the existing methods such as graph regularized tensor ring decomposition (GNTR) only models the pair-wise similarities of objects. For tensor data with complex manifold structure, the graph can not exactly construct similarity relationships. In this paper, in order to effectively utilize the higher-dimensional and complicated similarities among objects, we introduce hypergraph to the framework of NTR to further enhance the feature extraction, upon which a hypergraph regularized nonnegative tensor ring decomposition (HGNTR) method is developed. To reduce the computational complexity and suppress the noise, we apply the low-rank approximation trick to accelerate HGNTR (called LraHGNTR). Our experimental results show that compared with other state-of-the-art algorithms, the proposed HGNTR and LraHGNTR can achieve higher performance in clustering tasks, in addition, LraHGNTR can greatly reduce running time without decreasing accuracy.

Keywords

Cite

@article{arxiv.2109.02314,
  title  = {Fast Hypergraph Regularized Nonnegative Tensor Ring Factorization Based on Low-Rank Approximation},
  author = {Xinhai Zhao and Yuyuan Yu and Guoxu Zhou and Qibin Zhao and Weijun Sun},
  journal= {arXiv preprint arXiv:2109.02314},
  year   = {2021}
}