DocumentCode :
1928998
Title :
Feature selection assessment and comparison using two saliency measures in an Elman recurrent neural network
Author :
Laine, Trevor I. ; Bauer, Kenneth W.
Author_Institution :
Air Force Inst. of Technol., Wright-Patterson AFB, OH, USA
Volume :
4
fYear :
2003
fDate :
20-24 July 2003
Firstpage :
2807
Abstract :
This paper provides a summary of a feasibility study conducted to assess and compare a weight based and a network output sensitivity based saliency measure for use with an Elman recurrent neural network (RNN). An experiment was designed to assign temporal data with significant noise, autocorrelation and crosscorrelation into one of two classes. To improve classification accuracy, feature saliency screening was performed to select a subset of the eight candidate input features using a weight based signal-to-noise ratio and an output sensitivity based measure. With consistent selection and ranking of features observed between the two saliency measures, both indicated a parsimonious subset of three of the original eight input features should be retained. Using CPU time as a surrogate measure of operations required, the computational efficiency was also found equivalent, with an observed difference of less than 2.5% between methods. Numerical results show a parsimonious subset of features improved generalization by significantly reducing the classification accuracy variance for multiple data sets and trained RNNs across time periods. An increase in classification accuracy for the last time period was even obtained for an independent validation set using the reduced feature set.
Keywords :
pattern classification; recurrent neural nets; Elman recurrent neural network; classification accuracy; feasibility study; feature selection; output sensitivity based measure; saliency measures; weight based signal-to-noise ratio; Artificial neural networks; Autocorrelation; Feature extraction; Force measurement; Function approximation; Intelligent networks; Neural networks; Paper technology; Predictive models; Recurrent neural networks;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Neural Networks, 2003. Proceedings of the International Joint Conference on
ISSN :
1098-7576
Print_ISBN :
0-7803-7898-9
Type :
conf
DOI :
10.1109/IJCNN.2003.1224016
Filename :
1224016
Link To Document :
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