DocumentCode
2646717
Title
Piecewise Linear Model Tree: A modified combination of two learning algorithms for neuro-fuzzy models
Author
Jamab, Atiye Sarabi ; Araabi, Babak N.
Author_Institution
Electrical Engineering Department, Malek Ashtar University of Technology, Tehran, Iran
fYear
2006
fDate
4-6 Oct. 2006
Firstpage
2155
Lastpage
2159
Abstract
Locally Linear Model Tree (LOLIMOT) and Piecewise Linear Network (PLN) learning algorithms are two approaches in local linear modeling use different algorithm in each part of training phase. PLN learning is more depended on training data than LOIMOT and needs rich training data set. In PLN learning no division test is needed and it causes this algorithm to be much faster than LOLIMOT, but it may create adjacent neurons that would lead to singularity in regression matrix. In LOLIMOT, because of regular splitting of input space, this problem does not occur and always it leads to acceptable output error, but needs large number of neuron. Therefore, PILIMOT learning algorithm is introduced as modified combination of these two main Locally Linear approaches. This new method takes suitable error and neuron number from both of algorithms and leads to efficient network which is applicable to identify all functions. Simulation results show the advantage and behavior of new method.
Keywords
Approximation algorithms; Artificial neural networks; Function approximation; Neural networks; Neurons; Partitioning algorithms; Piecewise linear approximation; Piecewise linear techniques; Radial basis function networks; Training data;
fLanguage
English
Publisher
ieee
Conference_Titel
Computer Aided Control System Design, 2006 IEEE International Conference on Control Applications, 2006 IEEE International Symposium on Intelligent Control, 2006 IEEE
Conference_Location
Munich, Germany
Print_ISBN
0-7803-9797-5
Electronic_ISBN
0-7803-9797-5
Type
conf
DOI
10.1109/CACSD-CCA-ISIC.2006.4776974
Filename
4776974
Link To Document