DocumentCode :
3066627
Title :
Training multilayered neural networks by replacing the least fit hidden neurons
Author :
Prados, Donald L.
Author_Institution :
Dept. of Electr. Eng., New Orleans Univ., LA, USA
fYear :
1992
fDate :
12-15 Apr 1992
Firstpage :
634
Abstract :
The author discusses a supervised-learning algorithm, called GenLearn, for training multilayered neural networks. GenLearn uses techniques from the field of genetic algorithms to perform a global search of weight space and, thereby, to avoid the common problem of getting stuck in local minima. GenLearn is based on survival of the fittest hidden neuron. In searching for the most fit hidden neurons, GenLearn searches for a globally optimal internal representation of the input data. A big advantage of the GenLearn procedure over the generalized delta rule (GDR) in training three-layered neural nets is that, during each iteration of GenLearn, each weight in the first matrix is modified only once, whereas, in the GDR procedure, each weight in the first matrix is modified once for each output-layer neuron. What makes this such a big advantage is that, although GenLearn often reaches the desired mean square error in about the same number of iterations as the GDR, each iteration takes considerably less time
Keywords :
feedforward neural nets; genetic algorithms; learning (artificial intelligence); GenLearn; generalized delta rule; genetic algorithms; globally optimal internal representation; least fit hidden neurons; local minima; mean square error; multilayered neural networks; supervised-learning algorithm; survival of the fittest hidden neuron; training three-layered neural nets; weight space; Equations; Genetic algorithms; Joining processes; Mean square error methods; Multi-layer neural network; Neural networks; Neurons;
fLanguage :
English
Publisher :
ieee
Conference_Titel :
Southeastcon '92, Proceedings., IEEE
Conference_Location :
Birmingham, AL
Print_ISBN :
0-7803-0494-2
Type :
conf
DOI :
10.1109/SECON.1992.202273
Filename :
202273
Link To Document :
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