Network size plays an important role in the generalization performance of a network. A number of approaches which try to determine an \u27appropriate\u27 network size for a given problem have been developed during the last few years. Although it is usually demonstrated that such approaches are capable of finding small size networks that solve the problem at hand, it is quite remarkable that the generalization capabilities of these networks have not been thoroughly explored. In this paper, we have considered the weight elimination technique and we propose a scheme where it is coupled with genetic algorithms. Our objective is not only to find smaller size networks that solve the problem at hand, by pruning larger size networks, but also to im...
This paper is a progress report on investigations into methods for evolving scalefree networks using...
The current state of machine learning algorithms is that they mostly rely on manually crafted design...
In many applications of evolutionary algorithms the computational cost of applying operators and sto...
Network size plays an important role in the generalization performance of a network. A number of app...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
In the last decade, network analysis attracted the interest of analysts in exploring topological sha...
The authors present a technique for reducing the search-space of the genetic algorithm (GA) to impro...
A formalism for describing the dynamics of Genetic Algorithms (GAs) using methods from statistical m...
Abstract- Artificial Neural Networks have a number of properties which make them psuitable to solve ...
For many applications feedforward neural networks have proved to be a valuable tool. Although the ba...
Many complex systems can be described in terms of networks of interacting units. Recent studies have...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
A neural network may be considered as an adaptive system that progressively self-organizes in order ...
This paper is a progress report on investigations into methods for evolving scalefree networks using...
The current state of machine learning algorithms is that they mostly rely on manually crafted design...
In many applications of evolutionary algorithms the computational cost of applying operators and sto...
Network size plays an important role in the generalization performance of a network. A number of app...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
Recent theoretical results support that decreasing the number of free parameters in a neural network...
It has been demonstrated that genetic algorithms (GAs) can help search the global (or near global) o...
In the last decade, network analysis attracted the interest of analysts in exploring topological sha...
The authors present a technique for reducing the search-space of the genetic algorithm (GA) to impro...
A formalism for describing the dynamics of Genetic Algorithms (GAs) using methods from statistical m...
Abstract- Artificial Neural Networks have a number of properties which make them psuitable to solve ...
For many applications feedforward neural networks have proved to be a valuable tool. Although the ba...
Many complex systems can be described in terms of networks of interacting units. Recent studies have...
Genetic algorithms are computational techniques for search, optimization and machine learning that a...
A neural network may be considered as an adaptive system that progressively self-organizes in order ...
This paper is a progress report on investigations into methods for evolving scalefree networks using...
The current state of machine learning algorithms is that they mostly rely on manually crafted design...
In many applications of evolutionary algorithms the computational cost of applying operators and sto...