In dealing with complex problems, a monolithic neural network often becomes too large and complex to design and manage. The only practical way is to design modular neural network systems consisting of simple modules. While there has been a lot of work on combining different modules in a modular system in the fields of neural networks, statistics, and machine learning, little work has been done on how to design those modules automatically and how to exploit the interaction between individual module design and module combination. This paper proposes an evolutionary approach to designing modular neural networks. The approach addresses the issue of automatic determination of the number of individual modules and the exploitation of the interacti...
Modularity is an architectural trait that is prominent in biological neural networks, but strangely ...
Module Figure 7: Network of Autoassociative Modules There are several advantages exhibited by a mod...
Abstract. There exist many ideas and assumptions about the development and meaning of modularity in ...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...
In this paper, we propose an evolutionary approach to the design of optimal modular neural network a...
To investigate the relations between structure and function in both artificial and natural neural ne...
It is well known that the human brain is highly modular, having a structural and functional organiza...
Decomposing a complex computational problem into sub-problems, which are computationally simpler to ...
This thesis describes a novel approach to the evolution of Modular Artificial Neural Networks. Stand...
Modularity is a major feature of biological central nervous systems. For ex-ample, the human/primate...
This paper presents a method for designing artificial neural network architectures. The method impli...
This paper considers neural computing models for information processing in terms of collections of s...
The popular multi-layer perceptron (MLP) topology with an error-back propagation learning rule doesn...
This paper illustrates an artificial developmental system that is a computationally efficient techni...
Neural networks that learn the What and Where task perform better if they possess a modular architec...
Modularity is an architectural trait that is prominent in biological neural networks, but strangely ...
Module Figure 7: Network of Autoassociative Modules There are several advantages exhibited by a mod...
Abstract. There exist many ideas and assumptions about the development and meaning of modularity in ...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...
In this paper, we propose an evolutionary approach to the design of optimal modular neural network a...
To investigate the relations between structure and function in both artificial and natural neural ne...
It is well known that the human brain is highly modular, having a structural and functional organiza...
Decomposing a complex computational problem into sub-problems, which are computationally simpler to ...
This thesis describes a novel approach to the evolution of Modular Artificial Neural Networks. Stand...
Modularity is a major feature of biological central nervous systems. For ex-ample, the human/primate...
This paper presents a method for designing artificial neural network architectures. The method impli...
This paper considers neural computing models for information processing in terms of collections of s...
The popular multi-layer perceptron (MLP) topology with an error-back propagation learning rule doesn...
This paper illustrates an artificial developmental system that is a computationally efficient techni...
Neural networks that learn the What and Where task perform better if they possess a modular architec...
Modularity is an architectural trait that is prominent in biological neural networks, but strangely ...
Module Figure 7: Network of Autoassociative Modules There are several advantages exhibited by a mod...
Abstract. There exist many ideas and assumptions about the development and meaning of modularity in ...