广东省教育厅中英合作视觉信息处理实验室

China-UK Visual Information

Processing Laboratory

深圳大学计算机视觉研究所

Institute of Computer Vision,

Shenzhen University

研究成果

Kernelized Tensor Factorization Machines

会议名称: The 34th International Conference on Machine Learning (ICML)
全部作者: Lifang He, Chun-Ta Lu, Guixia Ma, Shen Wang, Linlin Shen*, Philip S. Yu, Ann B. Ragin
出版年份: 2017
会议地址: Sydney, Australia
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In the context of supervised tensor learning, preserving the structural information and exploiting the discriminative nonlinear relationships of tensor data is crucial for improving the performance of learning tasks. Based on tensor factorization theory and kernel method, we propose a novel Kernelized Support Tensor Machine (KSTM) which integrates kernelized tensor factorization with maximum-margin criterion. Specifically, the kernelized factorization technique is introduced to approximate the tensor data in kernel space such that the complex nonlinear relationships within tensor data can be explored. Further, dual structural preserving kernels are devised to learn the nonlinear boundary between tensor data. As a result of joint optimization, the kernels obtained in KSTM exhibit better generalization power to discriminative analysis. The experimental results on real-world neuroimaging datasets show the superiority of KSTM over the state-of-the-art techniques.