Data mining–based hierarchical cooperative coevolutionary algorithm for TSK-type neuro-fuzzy networks design

This study proposes a data mining–based hierarchical cooperative coevolutionary algorithm (DMHCCA) for TSK-type neuro-fuzzy networks design. The proposed DMHCCA consists of two-level evolutions: the neuro-level evolution (NULE) and the network-level evolution (NWLE). In NULE, a data mining–based evo...

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Bibliographic Details
Published in:Neural computing & applications Vol. 23; no. 2; pp. 485 - 498
Main Authors: Hsu, Chi-Yao, Lin, Sheng-Fuu, Chang, Jyun-Wei
Format: Journal Article
Language:English
Published: London Springer London 01.08.2013
Springer
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ISSN:0941-0643, 1433-3058
Online Access:Get full text
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Summary:This study proposes a data mining–based hierarchical cooperative coevolutionary algorithm (DMHCCA) for TSK-type neuro-fuzzy networks design. The proposed DMHCCA consists of two-level evolutions: the neuro-level evolution (NULE) and the network-level evolution (NWLE). In NULE, a data mining–based evolutionary learning algorithm is utilized to evolve neurons. The good combinations of neurons evolved in NULE are reserved for being the initial populations of NWLE. In NWLE, the initial population are mated and mutated to produce new structure of networks. Similar to NULE, the good neurons of evolved network in NWLE are inserted into the NULE. Thus, by interactive two-level evolutions, the neurons and structure of network can be evolved locally and globally, respectively. Simulation results using DMHCCA are reported and compared with other existing models. Application of DMHCCA to a three-dimensional (3D) surface alignment task is also described, and experimental results are presented better performance than other alignment systems.
ISSN:0941-0643
1433-3058
DOI:10.1007/s00521-012-0943-0