A SA-ANN-Based Modeling Method for Human Cognition Mechanism and the PSACO Cognition Algorithm

Artificial neural networks (ANNs) are the important approaches for researching human cognition process. However, current ANNs-based cognition methods cannot address the problems of complex information understanding and fault-tolerant learning. Here we present a modeling method for cognition mechanis...

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Main Authors: Shuting Chen, Dapeng Tan
Format: Article
Language:English
Published: Wiley 2018-01-01
Series:Complexity
Online Access:http://dx.doi.org/10.1155/2018/6264124
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author Shuting Chen
Dapeng Tan
author_facet Shuting Chen
Dapeng Tan
author_sort Shuting Chen
collection DOAJ
description Artificial neural networks (ANNs) are the important approaches for researching human cognition process. However, current ANNs-based cognition methods cannot address the problems of complex information understanding and fault-tolerant learning. Here we present a modeling method for cognition mechanism based on a simulated annealing–artificial neural network (SA-ANN). Firstly, the relationship between SA processing procedure and cognition knowledge evolution is analyzed, and a SA-ANN-based inference model is set up. Then, based on the inference model, a Powell SA with combinatorial optimization (PSACO) algorithm is proposed to improve the clustering efficiency and recognition accuracy for the cognition process. Finally, three groups of numerical instances for knowledge clustering are provided, and three comparative experiments are performed by self-developed cognition software. The simulated results show that the proposed method can increase the convergence rate by more than 20%, compared with the back-propagation (BP), SA, and restricted Boltzmann machines based extreme learning machine (RBM-ELM) algorithms. The comparative cognition experiments prove that the method can obtain better performances of information understanding and fault-tolerant learning, and the cognition accuracies for original sample, damaged sample, and transformed sample can reach 99.6%, 99.2%, and 97.1%, respectively.
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spelling doaj-art-8a60ea6b8dd04ffc8f532849f23aa6a32025-08-20T02:09:20ZengWileyComplexity1076-27871099-05262018-01-01201810.1155/2018/62641246264124A SA-ANN-Based Modeling Method for Human Cognition Mechanism and the PSACO Cognition AlgorithmShuting Chen0Dapeng Tan1Hangzhou Medical College, Hangzhou 310053, ChinaZhejiang University of Technology, Hangzhou 310032, ChinaArtificial neural networks (ANNs) are the important approaches for researching human cognition process. However, current ANNs-based cognition methods cannot address the problems of complex information understanding and fault-tolerant learning. Here we present a modeling method for cognition mechanism based on a simulated annealing–artificial neural network (SA-ANN). Firstly, the relationship between SA processing procedure and cognition knowledge evolution is analyzed, and a SA-ANN-based inference model is set up. Then, based on the inference model, a Powell SA with combinatorial optimization (PSACO) algorithm is proposed to improve the clustering efficiency and recognition accuracy for the cognition process. Finally, three groups of numerical instances for knowledge clustering are provided, and three comparative experiments are performed by self-developed cognition software. The simulated results show that the proposed method can increase the convergence rate by more than 20%, compared with the back-propagation (BP), SA, and restricted Boltzmann machines based extreme learning machine (RBM-ELM) algorithms. The comparative cognition experiments prove that the method can obtain better performances of information understanding and fault-tolerant learning, and the cognition accuracies for original sample, damaged sample, and transformed sample can reach 99.6%, 99.2%, and 97.1%, respectively.http://dx.doi.org/10.1155/2018/6264124
spellingShingle Shuting Chen
Dapeng Tan
A SA-ANN-Based Modeling Method for Human Cognition Mechanism and the PSACO Cognition Algorithm
Complexity
title A SA-ANN-Based Modeling Method for Human Cognition Mechanism and the PSACO Cognition Algorithm
title_full A SA-ANN-Based Modeling Method for Human Cognition Mechanism and the PSACO Cognition Algorithm
title_fullStr A SA-ANN-Based Modeling Method for Human Cognition Mechanism and the PSACO Cognition Algorithm
title_full_unstemmed A SA-ANN-Based Modeling Method for Human Cognition Mechanism and the PSACO Cognition Algorithm
title_short A SA-ANN-Based Modeling Method for Human Cognition Mechanism and the PSACO Cognition Algorithm
title_sort sa ann based modeling method for human cognition mechanism and the psaco cognition algorithm
url http://dx.doi.org/10.1155/2018/6264124
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