会议专题

Evaluation and Comparision of Compactly Supported Radial Basis Function for Kernel Machine

In order to reduce computer storage requirements for kernel matrix and the computational costs for floating point operations in kernel machine learning, compactly supported radial basis function is used for kernel machine to construct sparse kernel matrix. This paper deals with evaluation and comparison of compactly supported radial basis function for kernel machine in three aspects: the savings in storage, computation time for training, and performance. It is shown that savings in storage can be adjusted by user parameters, computation time for training decreases but it doest not mean that the more sparse the less training time, it will be stationary when ratio of non-zero elements of kernel matrix is in some range, the test accuracy to evaluate performance do not change much from our experimental results.

Yangguang Liu Xiaoqi He Bin Xu

Ningbo Institute of Technology, Zhejiang University Ningbo, China

国际会议

The 2010 International Conference on Intelligent Systems and Knowledge Engineering(第五届智能系统与知识工程国际会议)

杭州

英文

310-314

2010-11-15(万方平台首次上网日期,不代表论文的发表时间)