Semi-supervised logistic discrimination for functional data
Methodology
2013-02-15 v3 Machine Learning
Abstract
Multi-class classification methods based on both labeled and unlabeled functional data sets are discussed. We present a semi-supervised logistic model for classification in the context of functional data analysis. Unknown parameters in our proposed model are estimated by regularization with the help of EM algorithm. A crucial point in the modeling procedure is the choice of a regularization parameter involved in the semi-supervised functional logistic model. In order to select the adjusted parameter, we introduce model selection criteria from information-theoretic and Bayesian viewpoints. Monte Carlo simulations and a real data analysis are given to examine the effectiveness of our proposed modeling strategy.
Cite
@article{arxiv.1102.4399,
title = {Semi-supervised logistic discrimination for functional data},
author = {Shuichi Kawano and Sadanori Konishi},
journal= {arXiv preprint arXiv:1102.4399},
year = {2013}
}
Comments
21 pages, 7 figures