Welcome!
To use the personalized features of this site, please log in or register.
If you have forgotten your username or password, we can help.
|
 |
Support Vector Machine Ensemble with Bagging
| |
|
Support Vector Machine Ensemble with Bagging
Hyun-Chul Kim6 , Shaoning Pang6 , Hong-Mo Je6, Daijin Kim6 and Sung-Yang Bang6 
| (6) |
Department of Computer Science and Engineering, Pohang University of Science and Technology, San 31, Hyoja-Dong, Nam-Gu, Pohang, 790-784, Korea |
Abstract
Even the support vector machine (SVM) has been proposed to provide a good generalization performance, the classification result
of the practically implemented SVM is often far from the theoretically expected level because their implementations are based
on the approximated algorithms due to the high complexity of time and space. To improve the limited classification performance
of the real SVM, we propose to use the SVM ensembles with bagging (bootstrap aggregating). Each individual SVM is trained
independently using the randomly chosen training samples via a bootstrap technique. Then, they are aggregated into to make
a collective decision in several ways such as the majority voting, the LSE(least squares estimation)-based weighting, and
the double-layer hierarchical combining. Various simulation results for the IRIS data classification and the hand-written
digit recognitionshow that the proposed SVM ensembles with bagging outperforms a single SVM in terms of classification accuracy
greatly.
Fulltext Preview (Small, Large)
 References secured to subscribers.
|
|
|
|
|
|