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The improvement of Transductive Support Vector Machine and its application to network intrusion detection

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2 Author(s)
Yan Man-fu ; Dept. of Math., Tangshan Teacher''s Coll., Tangshan, China ; Liu Zhi-fang

The study on Transductive Support Vector Machine (TSVM) has made little progress since Vapnik put forth the concept in the late 1990s, as algorithm for TSVM optimization model can not be easily found. Here we try to transform the problem of TSVM optimization into an unconstrained one before constructing the smooth unconstrained optimization that has a kernel, and on the basis of which to devise a TSVM whose optimization problem is easier to solve to break through the bottleneck in order to deepen the research into TSVM and apply TSVM to network intrusion detection therefore provide a new method for it.

Published in:

Software Engineering and Service Sciences (ICSESS), 2010 IEEE International Conference on

Date of Conference:

16-18 July 2010