Adaptive Group Organization Cooperative Evolutionary Algorithm for TSK-type Neural Fuzzy Networks Design

Abstract

This paper proposes a novel adaptive group organization cooperative evolutionary algorithm (AGOCEA) for TSK-type neural fuzzy networks design. The proposed AGOCEA uses group-based cooperative evolutionary algorithm and self-organizing technique to automatically design neural fuzzy networks. The group-based evolutionary divided populations to several groups and each group can evolve itself. In the proposed self-organizing technique, it can automatically determine the parameters of the neural fuzzy networks, and therefore some critical parameters have no need to be assigned in advance. The simulation results are shown the better performance of the proposed algorithm than the other learning algorithms.

Authors and Affiliations

Sheng-Fuu Lin, Jyun-Wei Chang

Keywords

Related Articles

 Fuzzy Soft Sets Supporting Multi-Criteria Decision Processes

 Students experience various types of difficulties when it comes to examinations, where some of them are subject related while others are more of a psychological character. A number of factors influencing academic s...

 A Trust-based Mechanism for Avoiding Liars in Referring of Reputation in Multiagent System

 Trust is considered as the crucial factor for agents in decision making to choose the most trustworthy partner during their interaction in open distributed multiagent systems. Most current trust models are the comb...

Imputation And Classification Of Missing Data Using Least Square Support Vector Machines – A New Approach In Dementia Diagnosis

This paper presents a comparison of different data imputation approaches used in filling missing data and proposes a combined approach to estimate accurately missing attribute values in a patient database. The present st...

 Proposal of Tabu Search Algorithm Based on Cuckoo Search

 This paper presents a new version of Tabu Search (TS) based on Cuckoo Search (CS) called (Tabu-Cuckoo Search TCS) to reduce the effect of the TS problems. The proposed algorithm provides a more diversity to candida...

 Direction for Artificial Intelligence to Achieve Sapiency Inspired by Homo Sapiens

 Artificial intelligence technology has developed significantly in the past decades. Although many computational programs are able to approximate many cognitive abilities of Homo sapiens, the intelligence and sapien...

Download PDF file
  • EP ID EP120212
  • DOI -
  • Views 133
  • Downloads 0

How To Cite

Sheng-Fuu Lin, Jyun-Wei Chang (2013). Adaptive Group Organization Cooperative Evolutionary Algorithm for TSK-type Neural Fuzzy Networks Design. International Journal of Advanced Research in Artificial Intelligence(IJARAI), 2(3), 1-9. https://europub.co.uk./articles/-A-120212