Title :
A quotient space reduction for large-scale support vector machine datasets
Author :
Xi, Qin ; Yi-dan, Su
Author_Institution :
Department of Computer Engineering Guangxi University of Technology Liuzhou Guangxi, China
Abstract :
Againsting the low efficiency of training on large-scale support vector machine, use quotient space method to deduce a new sample reduction method, quotient space reduction(QSR). Unlike the traditional reduction methods, QSR brings the concept of “Granularity” into reduction method. It has two stages: CGR and FGR. In CGR, use KDC reduction to build the quotient space of original problem set with coarse grain-size. In FGR, build another quotient space with more fine grain-size. By changing the reduced intensity according to the number of redundant points remained, QSR gives a higher compression ratio and accuracy. Apply the new method to the large scale SVM social spam detection model. The detection model speed up obviously.
Keywords :
Accuracy; Clustering algorithms; Computational modeling; Data models; Kernel; Support vector machines; Training; SVM; granularity; quotient space; reduction;
Conference_Titel :
E -Business and E -Government (ICEE), 2011 International Conference on
Conference_Location :
Shanghai, China
Print_ISBN :
978-1-4244-8691-5
DOI :
10.1109/ICEBEG.2011.5881675