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
Abstract — Having many advantages, self-organizing systems could mean a solution for intelligent gro...
Abstract—This paper presents a cooperative coevolutive ap-proach for designing neural network ensemb...
This paper proposes a differential evolution with local information for TSK-type neuro-fuzzy system ...
This paper brings effort on the characterization of Cooperative Fuzzy Neural Networks (CFNNs). CFNNs...
Research has been conducted on how to develop machine intelligence. Artificial Neural Networks (ANN)...
This study presents an efficient immune symbiotic evolution learning algorithm for the compensatory ...
AbstractIn this study, we introduce a class of neural architectures of self-organizing neural networ...
In this thesis, an improved fast and accurate online self-organizing scheme for parsimonious fuzzy n...
In this paper, a novel self-constructing evolutionary algorithm (SCEA) for designing a TSK-type fuzz...
Abstract—This study proposes an efficient self-evolving evolu-tionary learning algorithm (SEELA) for...
This study proposes a cooperative particle swarm optimization (CPSO) to optimize the parameters of t...
Abstract. The development of a global-based method for building robust neuro-fuzzy networks has beco...
This paper proposes a group-based evolutionary algorithm (GEA) for the fuzzy system (FS) optimizatio...
. This paper proposes a co-evolutionary learning system, i.e., CELS, to design neural network (NN) e...
A self-organizing neural network is proposed which is inherently a fizzy inference system with the c...
Abstract — Having many advantages, self-organizing systems could mean a solution for intelligent gro...
Abstract—This paper presents a cooperative coevolutive ap-proach for designing neural network ensemb...
This paper proposes a differential evolution with local information for TSK-type neuro-fuzzy system ...
This paper brings effort on the characterization of Cooperative Fuzzy Neural Networks (CFNNs). CFNNs...
Research has been conducted on how to develop machine intelligence. Artificial Neural Networks (ANN)...
This study presents an efficient immune symbiotic evolution learning algorithm for the compensatory ...
AbstractIn this study, we introduce a class of neural architectures of self-organizing neural networ...
In this thesis, an improved fast and accurate online self-organizing scheme for parsimonious fuzzy n...
In this paper, a novel self-constructing evolutionary algorithm (SCEA) for designing a TSK-type fuzz...
Abstract—This study proposes an efficient self-evolving evolu-tionary learning algorithm (SEELA) for...
This study proposes a cooperative particle swarm optimization (CPSO) to optimize the parameters of t...
Abstract. The development of a global-based method for building robust neuro-fuzzy networks has beco...
This paper proposes a group-based evolutionary algorithm (GEA) for the fuzzy system (FS) optimizatio...
. This paper proposes a co-evolutionary learning system, i.e., CELS, to design neural network (NN) e...
A self-organizing neural network is proposed which is inherently a fizzy inference system with the c...
Abstract — Having many advantages, self-organizing systems could mean a solution for intelligent gro...
Abstract—This paper presents a cooperative coevolutive ap-proach for designing neural network ensemb...
This paper proposes a differential evolution with local information for TSK-type neuro-fuzzy system ...