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http://dx.doi.org/10.5351/CSAM.2016.23.4.355

Ensemble approach for improving prediction in kernel regression and classification  

Han, Sunwoo (Department of Applied Statistics, Yonsei University)
Hwang, Seongyun (Department of Statistics, Hankuk University of Foreign Studies)
Lee, Seokho (Department of Statistics, Hankuk University of Foreign Studies)
Publication Information
Communications for Statistical Applications and Methods / v.23, no.4, 2016 , pp. 355-362 More about this Journal
Abstract
Ensemble methods often help increase prediction ability in various predictive models by combining multiple weak learners and reducing the variability of the final predictive model. In this work, we demonstrate that ensemble methods also enhance the accuracy of prediction under kernel ridge regression and kernel logistic regression classification. Here we apply bagging and random forests to two kernel-based predictive models; and present the procedure of how bagging and random forests can be embedded in kernel-based predictive models. Our proposals are tested under numerous synthetic and real datasets; subsequently, they are compared with plain kernel-based predictive models and their subsampling approach. Numerical studies demonstrate that ensemble approach outperforms plain kernel-based predictive models.
Keywords
bagging; bootstrap; ensemble method; kernel trick; logistic regression; random forest; regression;
Citations & Related Records
Times Cited By KSCI : 1  (Citation Analysis)
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