@inproceedings{7e0f2e1c4aa44e0a8bba551359d56b6b,
title = "Localized generalization error and its application to RBFNN training",
abstract = "The generalization error bounds for the entire input space found by current error models using the number of effective parameters of a classifier and the number of training samples are usually very loose. But classifiers such as SVM, RBFNN and MLPNN, are really local learning machines used for many application problems which consider unseen samples close to the training samples more important. In this paper, we propose a localized generalization error model which bounds above the generalization error within a neighborhood of the training samples using stochastic sensitivity measure (expectation of the squared output perturbations). It is then used to develop a model selection technique for a classifier with maximal coverage of unseen samples by specifying a generalization error threshold. Experiments by using eight real world datasets show that, in comparing with cross-validation, sequential learning, and two other ad-hoc methods, our technique consistently yields the best testing classification accuracy with fewer hidden neurons and less training time.",
keywords = "Generalization Error, Model Selection, Network Architecture, Neural Networks, Radial Basis Function NN",
author = "Ng, \{Wing W.Y.\} and Yeung, \{Daniel S.\} and Wang, \{D. E.Feng\} and Tsang, \{Eric C.C.\} and Wang, \{X. I.Zhao\}",
year = "2005",
doi = "10.1109/icmlc.2005.1527762",
language = "英语",
isbn = "078039092X",
series = "2005 International Conference on Machine Learning and Cybernetics, ICMLC 2005",
publisher = "IEEE Computer Society",
pages = "4667--4673",
booktitle = "2005 International Conference on Machine Learning and Cybernetics, ICMLC 2005",
address = "美国",
note = "International Conference on Machine Learning and Cybernetics, ICMLC 2005 ; Conference date: 18-08-2005 Through 21-08-2005",
}