Publication: Incremental and Decremental SVM for Regression
Loading...
Date
Journal Title
Journal ISSN
Volume Title
Publisher
INTERNATIONAL JOURNAL OF COMPUTERS COMMUNICATIONS & CONTROL
Abstract
Training a support vector machine (SVM) for regression (function approximation)
in an incremental/decremental way consists essentially in migrating the
input vectors in and out of the support vector set with specific modification of the
associated thresholds. We introduce with full details such a method, which allows
for defining the exact increments or decrements associated with the thresholds before
vector migrations take place. Two delicate issues are especially addressed: the
variation of the regularization parameter (for tuning the model performance) and the
extreme situations where the support vector set becomes empty. We experimentally
compare our method with several regression methods: the multilayer perceptron, two
standard SVM implementations, and two models based on adaptive resonance theory.
Description
Citation
@article{gi2016incremental, title={Incremental and decremental SVM for regression}, author={G{\'\i}, Honorius and Sasu, Lucian Mircea and Andonie, Razvan and others}, journal={International Journal of Computers Communications \& Control}, volume={11}, number={6}, pages={755--775}, year={2016} }
