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Sparse Tensor PCA via Tensor Decomposition for Unsupervised Feature Selection

24 July 2024
Junjing Zheng
Xinyu Zhang
Weidong Jiang
Xiangfeng Qiu
Mingjian Ren
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Abstract

Recently, introducing Tensor Decomposition (TD) techniques into unsupervised feature selection (UFS) has been an emerging research topic. A tensor structure is beneficial for mining the relations between different modes and helps relieve the computation burden. However, while existing methods exploit TD to preserve the data tensor structure, they do not consider the influence of data orientation and thus have difficulty in handling orientation-specific data such as time series. To solve the above problem, we utilize the orientation-dependent tensor-tensor product from Tensor Singular Value Decomposition based on *M-product (T-SVDM) and extend the one-dimensional Sparse Principal Component Analysis (SPCA) to a tensor form. The proposed sparse tensor PCA model can constrain sparsity at the specified mode and yield sparse tensor principal components, enhancing flexibility and accuracy in learning feature relations. To ensure fast convergence and a flexible description of feature correlation, we develop a convex version specially designed for general UFS tasks and propose an efficient slice-by-slice algorithm that performs dual optimization in the transform domain. Experimental results on real-world datasets demonstrate the effectiveness and remarkable computational efficiency of the proposed method for tensor data of diverse structures over the state-of-the-arts. With a proper combination of data orientation and transform domain, our method is promising for various applications. The codes related to our proposed methods and the experiments are available atthis https URL.

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@article{zheng2025_2407.16985,
  title={ Sparse Tensor PCA via Tensor Decomposition for Unsupervised Feature Selection },
  author={ Junjing Zheng and Xinyu Zhang and Weidong Jiang and Xiangfeng Qiu and Mingjian Ren },
  journal={arXiv preprint arXiv:2407.16985},
  year={ 2025 }
}
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