DocumentCode :
1872553
Title :
Towards the evolution of training data sets for artificial neural networks
Author :
Mayer, Helmut A. ; Schwaiger, Roland
Author_Institution :
Dept. of Comput. Sci., Salzburg Univ., Austria
fYear :
1997
fDate :
13-16 Apr 1997
Firstpage :
663
Lastpage :
666
Abstract :
While most efforts in artificial neural network (ANN) research have been put into the investigation of network types, network topologies, various types of neurons and training algorithms, work on training data sets (TDSs) for ANNs has been comparably small. There are some approximations for the size of ANN TDSs, but little is known about the quality of TDSs, i.e. selecting data sets from which the ANN can draw the most information. As a matter of fact, with most real-world applications, not even human experts who are familiar with the problem can give accurate guidelines for the construction of the TDS. In order to automate this process, we investigate the use of a genetic algorithm (GA) for the selection of appropriate input patterns for the TDS. The parallel netGEN system, which uses a GA to generate problem-adapted generalized multilayer perceptrons trained by error backpropagation, has been extended to evolve (sub)-optimal TDSs. Empirical results on a simple example problem are presented
Keywords :
backpropagation; genetic algorithms; multilayer perceptrons; parallel algorithms; artificial neural networks; error backpropagation; genetic algorithm; input pattern selection; parallel netGEN system; problem-adapted generalized multilayer perceptrons; sub-optimal training data set evolution; training data set quality; Artificial neural networks; Genetic algorithms; Image sensors; Network topology; Neurons; Pixel; Robot sensing systems; Satellites; Thumb; Training data;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Evolutionary Computation, 1997., IEEE International Conference on
Conference_Location :
Indianapolis, IN
Print_ISBN :
0-7803-3949-5
Type :
conf
DOI :
10.1109/ICEC.1997.592398
Filename :
592398
Link To Document :
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