Weiya Shi

Work place: School of Information Science and Engineering Henan University of Technology, Zhengzhou, China

E-mail: wyshi@fudan.edu.cn

Website:

Research Interests: Image Processing, Pattern Recognition, Neural Networks

Biography

Weiya Shi was born at Zhoukou, Henan,China in April 3rd,1973. He received his B.S. degree in    Physics    from    ZhengZhou    University, ZhengZhou,  China,  in  1998.  He  received  his Ph.D.   degree   in   Department   of   Computer Science  and  Engineering,  Fudan  University, Shanghai, China, in 2009. His current research interest includes pattern recognition, neural network and image processing.
He is now a teacher at the Henan University of Technology, Zhengzhou,  China.  He  is  associate  professor  in  the  field  of computer science. His previous publications consist of “Matrix- based  Kernel  Principal  Component  Analysis  for  Large-scale Data  Se”(IJCNN  2009),  “SupportMatrix  Machine  for  Large- scale data set” (ICIECS2009) and so on.
Dr. Shi is the Fellow of INNS. His hobbies include music, football and dance.

Author Articles
Matrix-based Kernel Method for Large-scale Data Set

By Weiya Shi

DOI: https://doi.org/10.5815/ijigsp.2010.02.01, Pub. Date: 8 Dec. 2010

In the computation process of many kernel methods, one of the important step is the formation of the kernel matrix. But the size of kernel matrix scales with the number of data set, it is infeasible to store and compute the kernel matrix when faced with the large-scale data set. To overcome computational and storage problem for large-scale data set, a new framework, matrix-based kernel method, is proposed. By initially dividing the large scale data set into small subsets, we could treat the autocorrelation matrix of each subset as the special computational unit. A novel polynomial-matrix kernel function is then adopted to compute the similarity between the data matrices in place of vectors. The proposed method can greatly reduce the size of kernel matrix, which makes its computation possible. The effectiveness is demonstrated by the experimental results on the artificial and real data set.

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