A pattern classification problem usually involves using high-dimensional features that make the classifier very complex and difficult to train. With no feature reduction, both training accuracy and generalization capability will suffer. This paper proposes a novel hybrid filter-wrapper-type feature subset selection methodology using a localized generalization error model. The localized generalization error model for a radial basis function neural network bounds from above the generalization error for unseen samples located within a neighborhood of the training samples. Iteratively, the feature making the smallest contribution to the generalization error bound is removed. Moreover, the novel feature selection method is independent of the sam...
The absence of assumptions about the dataset to be classified is one of the major attractions of neu...
This paper combines feature selection methods with a two-stage evolutionary classifier based on prod...
In this paper, we bound the generalization error of a class of Radial Basis Function networks, for...
The generalization error bounds for the entire input space found by current error models using the n...
In pattern classification problem, one trains a classifier to recognize future unseen samples using ...
It has been shown that the selection of the most similar training patterns to generalize a new sampl...
Proceeding of: International Conference Artificial Neural Networks — ICANN 2001. Vienna, Austria, Au...
It has been shown that the selection of the most similar training patterns to generalize a new sampl...
Feature subset selection is an essential pre-processing task in machine learning and pattern recogni...
Ignoring the samples far away from the training samples, our study team gives a new norm-based deriv...
Large data sets containing irrelevant or redundant input samples reduce the performance of learning ...
Radial Basis Neural Networks have been successfully used in many applications due, mainly, to their ...
This paper describes an optimized training approach of radial basis function (RBF) classification by...
Proceeding of: 16th International Conference on Artificial Neural Networks, ICANN 2006. Athens, Gree...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
The absence of assumptions about the dataset to be classified is one of the major attractions of neu...
This paper combines feature selection methods with a two-stage evolutionary classifier based on prod...
In this paper, we bound the generalization error of a class of Radial Basis Function networks, for...
The generalization error bounds for the entire input space found by current error models using the n...
In pattern classification problem, one trains a classifier to recognize future unseen samples using ...
It has been shown that the selection of the most similar training patterns to generalize a new sampl...
Proceeding of: International Conference Artificial Neural Networks — ICANN 2001. Vienna, Austria, Au...
It has been shown that the selection of the most similar training patterns to generalize a new sampl...
Feature subset selection is an essential pre-processing task in machine learning and pattern recogni...
Ignoring the samples far away from the training samples, our study team gives a new norm-based deriv...
Large data sets containing irrelevant or redundant input samples reduce the performance of learning ...
Radial Basis Neural Networks have been successfully used in many applications due, mainly, to their ...
This paper describes an optimized training approach of radial basis function (RBF) classification by...
Proceeding of: 16th International Conference on Artificial Neural Networks, ICANN 2006. Athens, Gree...
This paper addresses the problem of feature subset selection for classification tasks. In particular...
The absence of assumptions about the dataset to be classified is one of the major attractions of neu...
This paper combines feature selection methods with a two-stage evolutionary classifier based on prod...
In this paper, we bound the generalization error of a class of Radial Basis Function networks, for...