Multimodal sparse support tensor machine for multiple classification learning

This paper develops new multiple classification approaches in a direct manner for high-dimensional multimodal data. Firstly, we construct multiple hyperplanes via the tensor multimodal product and design a novel piecewise quadratic loss function ‘ ℓ cC ’ in the soft-margin scheme to propose the mult...

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Bibliographic Details
Published inInternational journal of machine learning and cybernetics Vol. 15; no. 4; pp. 1361 - 1373
Main Authors Wang, Shuangyue, Zhang, Xinrong, Luo, Ziyan, Wang, Yingnan
Format Journal Article
LanguageEnglish
Published Berlin/Heidelberg Springer Berlin Heidelberg 01.04.2024
Springer Nature B.V
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Summary:This paper develops new multiple classification approaches in a direct manner for high-dimensional multimodal data. Firstly, we construct multiple hyperplanes via the tensor multimodal product and design a novel piecewise quadratic loss function ‘ ℓ cC ’ in the soft-margin scheme to propose the multimodal support tensor machine model (MSTM). Furthermore, to alleviate the overfitting phenomenon in small-size sampling instances, we construct a multimodal sparsity constrained support tensor machine model (MSSTM) by subtly imposing the sparsity constraint on the decision variables of the dual problem. In addition, the Newton method and subspace Newton method are employed to solve the MSTM and MSSTM models from the dual perspective, taking advantage of the differentiation properties of ‘ ℓ cC ’ and the hard-thresholding operator, respectively. Numerical experiments on four image datasets demonstrate the efficiency of the proposed methods in terms of classification accuracy and training time for multiple classification.
ISSN:1868-8071
1868-808X
DOI:10.1007/s13042-023-01972-w