Studying the effect of training Levenberg Marquardt neural network by using hybrid meta-heuristic algorithms
Accelerated Particle Swarm Optimization (APSO) algorithm is one of the latest additions to the group of meta-heuristic nature inspired algorithms which provides derivative-free solutions to solve complex problems. Meanwhile, the Levenberg Marquardt Back propagation (LMBP) still it is not able to...
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iium-510192016-08-03T00:37:16Z http://irep.iium.edu.my/51019/ Studying the effect of training Levenberg Marquardt neural network by using hybrid meta-heuristic algorithms Abubakar, Adamu Khan, Abdullah Nawi, Nazri Mohd Rehman, M. Z. Teh , Ying Wah Chiroma , Haruna Herawan, Tutut QA76 Computer software Accelerated Particle Swarm Optimization (APSO) algorithm is one of the latest additions to the group of meta-heuristic nature inspired algorithms which provides derivative-free solutions to solve complex problems. Meanwhile, the Levenberg Marquardt Back propagation (LMBP) still it is not able to avoid local minimum. To deal with this problem, global search optimization technique has the ability to adjust the weight for NN (Neural Network) to avoid the local minima problem. This paper proposes an accelerated particle swarm optimization (APSO) is implemented in conjunction with Levenberg Marquardt back propagation (LMBP) algorithms to achieve faster convergence rate and to avoid local minima problem. The performances of the proposed Accelerated Particle Swarm Optimization Levenberg Marquardt (APSO_LM) algorithms compared by means of simulations on 7-Bit Parity and six UCI benchmark classification datasets. The simulation results show that the APSO-LM algorithm shows better performance than baseline algorithms in terms of convergence speed and Mean Squared Error (MSE). American Scientific Publishers 2016-01 Article PeerReviewed application/pdf en http://irep.iium.edu.my/51019/1/Attach_Lavenberg.pdf application/pdf en http://irep.iium.edu.my/51019/4/51019-Studying_the_effect_of_training_levenberg_marquardt_neural_network_by_using_hybrid_meta-heuristic_algorithms_SCOPUS.pdf Abubakar, Adamu and Khan, Abdullah and Nawi, Nazri Mohd and Rehman, M. Z. and Teh , Ying Wah and Chiroma , Haruna and Herawan, Tutut (2016) Studying the effect of training Levenberg Marquardt neural network by using hybrid meta-heuristic algorithms. Journal of Computational and Theoretical Nanoscience, 13 (1). pp. 450-460. ISSN 1546-1955 E-ISSN 1546-1963 http://www.ingentaconnect.com/contentone/asp/jctn/2016/00000013/00000001/art00066 10.1166/jctn.2016.4826 |
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QA76 Computer software Abubakar, Adamu Khan, Abdullah Nawi, Nazri Mohd Rehman, M. Z. Teh , Ying Wah Chiroma , Haruna Herawan, Tutut Studying the effect of training Levenberg Marquardt neural network by using hybrid meta-heuristic algorithms |
description |
Accelerated Particle Swarm Optimization (APSO) algorithm is one of the latest additions to the
group of meta-heuristic nature inspired algorithms which provides derivative-free solutions to solve
complex problems. Meanwhile, the Levenberg Marquardt Back propagation (LMBP) still it is not
able to avoid local minimum. To deal with this problem, global search optimization technique has
the ability to adjust the weight for NN (Neural Network) to avoid the local minima problem. This
paper proposes an accelerated particle swarm optimization (APSO) is implemented in conjunction
with Levenberg Marquardt back propagation (LMBP) algorithms to achieve faster convergence rate
and to avoid local minima problem. The performances of the proposed Accelerated Particle Swarm
Optimization Levenberg Marquardt (APSO_LM) algorithms compared by means of simulations on
7-Bit Parity and six UCI benchmark classification datasets. The simulation results show that the
APSO-LM algorithm shows better performance than baseline algorithms in terms of convergence
speed and Mean Squared Error (MSE). |
format |
Article |
author |
Abubakar, Adamu Khan, Abdullah Nawi, Nazri Mohd Rehman, M. Z. Teh , Ying Wah Chiroma , Haruna Herawan, Tutut |
author_facet |
Abubakar, Adamu Khan, Abdullah Nawi, Nazri Mohd Rehman, M. Z. Teh , Ying Wah Chiroma , Haruna Herawan, Tutut |
author_sort |
Abubakar, Adamu |
title |
Studying the effect of training Levenberg
Marquardt neural network by using hybrid
meta-heuristic algorithms |
title_short |
Studying the effect of training Levenberg
Marquardt neural network by using hybrid
meta-heuristic algorithms |
title_full |
Studying the effect of training Levenberg
Marquardt neural network by using hybrid
meta-heuristic algorithms |
title_fullStr |
Studying the effect of training Levenberg
Marquardt neural network by using hybrid
meta-heuristic algorithms |
title_full_unstemmed |
Studying the effect of training Levenberg
Marquardt neural network by using hybrid
meta-heuristic algorithms |
title_sort |
studying the effect of training levenberg
marquardt neural network by using hybrid
meta-heuristic algorithms |
publisher |
American Scientific Publishers |
publishDate |
2016 |
url |
http://irep.iium.edu.my/51019/ http://irep.iium.edu.my/51019/ http://irep.iium.edu.my/51019/ http://irep.iium.edu.my/51019/1/Attach_Lavenberg.pdf http://irep.iium.edu.my/51019/4/51019-Studying_the_effect_of_training_levenberg_marquardt_neural_network_by_using_hybrid_meta-heuristic_algorithms_SCOPUS.pdf |
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2023-09-18T21:12:11Z |
last_indexed |
2023-09-18T21:12:11Z |
_version_ |
1777411326604214272 |