Title
Genetically optimized extreme learning machine
Abstract
This paper proposes a learning algorithm for single-hidden layer feedforward neural networks (SLFN) called genetically optimized extreme learning machine (GO-ELM). In the GO-ELM, the structure and the parameters of the SLFN are optimized by a genetic algorithm (GA). The output weights, like in the batch ELM, are obtained by a least squares algorithm, but using Tikhonov's regularization in order to improve the SLFN performance in the presence of noisy data. The GA is used to tune the set of input variables, the hidden-layer configuration and bias, the input weights and the Tikhonov's regularization factor. The proposed method was applied and compared with four other methods over five benchmark problems available in a public repository. Besides it was applied in the estimation of the temperature at the burning zone of a real cement kiln plant.
Year
DOI
Venue
2013
10.1109/ETFA.2013.6647975
Emerging Technologies & Factory Automation
Keywords
Field
DocType
feedforward neural nets,genetic algorithms,learning (artificial intelligence),least squares approximations,GA,GO-ELM,SLFN,Tikhonov regularization factor,genetic algorithm,genetically optimized extreme learning machine,learning algorithm,least squares algorithm,noisy data,single hidden layer feedforward neural networks
Tikhonov regularization,Mathematical optimization,Noisy data,Feedforward neural network,Extreme learning machine,Computer science,Algorithm,Control engineering,Regularization (mathematics),Least mean square algorithm,Population-based incremental learning,Genetic algorithm
Conference
ISSN
ISBN
Citations 
1946-0740
978-1-4799-0862-2
4
PageRank 
References 
Authors
0.41
11
5
Name
Order
Citations
PageRank
Tiago Matias1354.65
Rui Araújo262.59
Carlos Henggeler Antunes326134.75
Carlos Henggeler Antunes426134.75
Dulce Gabriel540.75