Decomposing a complex computational problem into sub-problems, which are computationally simpler to solve individually and which can be combined to produce a solution to the full problem, can efficiently lead to compact and general solutions. Modular neural networks represent one of the ways in which this divide-and-conquer strategy can be implemented. Here we present a co-evolutionary model which is used to design and optimize modular neural networks with task-specific modules. The model consists of two populations. The first population consists of a pool of modules and the second population synthesizes complete systems by drawing elements from the pool of modules. Modules represent a part of the solution, which co-operates with others in ...
Abst rac t. In this paper, we propose a new methodology for decompos-ing pattern classification prob...
Abstract. A scalable architecture to facilitate emergent (self-organized) task decomposition using n...
The manual design of con- trol systems for robotic devices can be challenging. Methods for the autom...
Decomposing a complex computational problem into sub-problems, which are computationally simpler to ...
To my mother and father, to whom I owe everything. iii This work is an attempt towards developing a ...
One way to train neural networks is to use evolutionary algorithms such as cooperative coevolution -...
This paper presents COVNET, a new cooperative coevolutionary model for evolving artificial neural ne...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...
In dealing with complex problems, a monolithic neural network often becomes too large and complex to...
In the application of cooperative coevolution for neuro-evolution, problem decomposition methods re...
Problem decomposition is an important aspect in using cooperative coevolution for neuro-evolution. C...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...
This paper illustrates an artificial developmental system that is a computationally efficient techni...
It is well known that the human brain is highly modular, having a structural and functional organiza...
The brain can be viewed as a complex modular structure with features of information processing throu...
Abst rac t. In this paper, we propose a new methodology for decompos-ing pattern classification prob...
Abstract. A scalable architecture to facilitate emergent (self-organized) task decomposition using n...
The manual design of con- trol systems for robotic devices can be challenging. Methods for the autom...
Decomposing a complex computational problem into sub-problems, which are computationally simpler to ...
To my mother and father, to whom I owe everything. iii This work is an attempt towards developing a ...
One way to train neural networks is to use evolutionary algorithms such as cooperative coevolution -...
This paper presents COVNET, a new cooperative coevolutionary model for evolving artificial neural ne...
The structure and performance of neural networks are intimately connected, and by use of evolutionar...
In dealing with complex problems, a monolithic neural network often becomes too large and complex to...
In the application of cooperative coevolution for neuro-evolution, problem decomposition methods re...
Problem decomposition is an important aspect in using cooperative coevolution for neuro-evolution. C...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...
This paper illustrates an artificial developmental system that is a computationally efficient techni...
It is well known that the human brain is highly modular, having a structural and functional organiza...
The brain can be viewed as a complex modular structure with features of information processing throu...
Abst rac t. In this paper, we propose a new methodology for decompos-ing pattern classification prob...
Abstract. A scalable architecture to facilitate emergent (self-organized) task decomposition using n...
The manual design of con- trol systems for robotic devices can be challenging. Methods for the autom...