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Feature selection using localized generalization error for supervised classification problems using RBFNN

机译:基于局部泛化误差的特征选择,基于RBFNN的监督分类问题

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摘要

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 sample size and is computationally fast. The experimental results show that the proposed method consistently removes large percentages of features with statistically insignificant loss of testing accuracy for unseen samples. In the experiments for two of the datasets, the classifiers built using feature Subsets with 90% of features removed by our proposed approach yield average testing accuracies higher than those trained using the full set of features. Finally, we corroborate the efficacy of the model by using it to predict corporate bankruptcies in the US. (C) 2008 Elsevier Ltd. All rights reserved.
机译:模式分类问题通常涉及使用使分类器非常复杂且难以训练的高维特征。如果不减少特征,训练精度和泛化能力都会受到影响。本文提出了一种新的使用局部化广义误差模型的混合滤波器包装类型特征子集选择方法。径向基函数神经网络的局部化泛化误差模型从位于训练样本附近的未见样本的泛化误差上限定了边界。迭代地,删除对泛化误差范围贡献最小的特征。此外,新颖的特征选择方法与样本大小无关,并且计算速度快。实验结果表明,对于看不见的样本,该方法始终删除了很大比例的特征,而测试准确性的统计损失却微不足道。在两个数据集的实验中,使用特征子集构建的分类器(通过我们提出的方法删除了90%的特征)产生的平均测试精度高于使用完整特征集训练的平均测试精度。最后,我们通过使用该模型预测美国的公司破产来证实该模型的有效性。 (C)2008 Elsevier Ltd.保留所有权利。

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