Feature Selection With Neural Networks

被引:18
作者
Philippe Leray
Patrick Gallinari
机构
[1] LIP6-Pôle IA-Université Paris 6-boite 169,
关键词
Feature Selection; Subset selection; Variable Sensitivity; Sequential Search;
D O I
10.2333/bhmk.26.145
中图分类号
学科分类号
摘要
The observed features of a given phenomenon are not all equally informative: some may be noisy, others correlated or irrelevant. The purpose of feature selection is to select a set of features pertinent to a given task. This is a complex process, but it is an important issue in many fields. In neural networks, feature selection has been studied for the last ten years, using conventional and original methods. This paper is a review of neural network approaches to feature selection. We first briefly introduce baseline statistical methods used in regression and classification. We then describe families of methods which have been developed specifically for neural networks. Representative methods are then compared on different test problems.
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页码:145 / 166
页数:21
相关论文
共 38 条
[1]  
Akaike H(1970)Statistical Predictor Identification Ann. Inst. Statist. Math. 22 203-217
[2]  
Battiti R(1994)Using Mutual Information for Selecting Features in Supervised Neural Net Learning IEEE Transactions on Neural Networks 5 537-550
[3]  
Baxt WG(1995)Bootstrapping confidence intervals for clinical input variable effects in a network trained to identify the presence of acute myocardial infraction Neural Computation 7 624-638
[4]  
White H(1996)Variable Selection with Neural Networks Neurocomputing 12 223-248
[5]  
Cibas T(1986)Independent Coordinates for Strange Attractors from Mutual Information Physical Review 33 1134-1140
[6]  
Fogelman Soulié F(1977)Selection of Variables in Discriminant Analysis by F -statistic and Error Rate Technometrics 19 487-493
[7]  
Gallinari P(1993)Optimal Brain Damage Second Order Derivatives for Network Pruning: Optimal Brain Surgeon Neural Information Processing Systems 5 164-171
[8]  
Raudys S(1990)A Branch and Bound Algorithm for Feature Subset Selection Neural Information Processing Systems 2 598-605
[9]  
Fraser AM(1977)Bayesian Selection of Important Features for Eeedforward Neural Networks IEEE Transactions on Computers 26 917-922
[10]  
Swinney HL(1993)Floating search methods in feature selection Neurocomputing 5 91-103