This thesis argues that natural complex systems can provide an inspiring example for creating software which incorporates emergent, self-organizing and adaptive properties. The advantages of complex sys- tems are their natural resilience, redundancy and adaptivity. A generalization of neural networks and boolean networks called computational networks is presented as a model for complex systems. It is argued that this model satisfies the required properties for modeling complex systems. Furthermore, it is asserted that a computational network, being a network of mathematical functions, is appropriate for solving classification problems. For the design of computational networks an evolutionary design algorithm is constructed. Additionally, fo...
The talk presents an overview of current methods of computational intelligence (CI) called evolving ...
A new generation of computational intelligent systems is introduced in a generic framework of the ev...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...
In this participation, we are continuing to show mutual intersection of two completely different are...
This research is to develop a biologically inspired hybrid intelligent system - evolving neural netw...
* Supported by INTAS 00-626 and TIC 2003-09319-c03-03.This paper presents some connectionist models ...
Uninitiated may nd it strange that articial evolu-tion resides among a class of problem solving meth...
Our project uses ideas first presented by Alan Turing. Turing's immense contribution to mathematics ...
AbstractThis paper examines the need for complex, adaptive solutions to certain types of complex sit...
Many representations have been presented to enable the effective evolution of computer programs. Tur...
The objective of Evolutionary Computation is to solve practical problems (e.g.optimization, data min...
Many representations have been presented to enable the effective evolution of computer programs. Tur...
This paper presents an extended behavior of networks of evolutionary processors. Usually, such nets ...
The goal of this work is construction of an artificial life model and simulation of organisms in an ...
The talk presents an overview of current methods of computational intelligence (CI) called evolving ...
A new generation of computational intelligent systems is introduced in a generic framework of the ev...
The aim of this work is the genetic design of neural networks, which are able to classify within var...
The evolutionary approach to arti®cial neural networks has been rapidly developing in recent years a...
In this participation, we are continuing to show mutual intersection of two completely different are...
This research is to develop a biologically inspired hybrid intelligent system - evolving neural netw...
* Supported by INTAS 00-626 and TIC 2003-09319-c03-03.This paper presents some connectionist models ...
Uninitiated may nd it strange that articial evolu-tion resides among a class of problem solving meth...
Our project uses ideas first presented by Alan Turing. Turing's immense contribution to mathematics ...
AbstractThis paper examines the need for complex, adaptive solutions to certain types of complex sit...
Many representations have been presented to enable the effective evolution of computer programs. Tur...
The objective of Evolutionary Computation is to solve practical problems (e.g.optimization, data min...
Many representations have been presented to enable the effective evolution of computer programs. Tur...
This paper presents an extended behavior of networks of evolutionary processors. Usually, such nets ...
The goal of this work is construction of an artificial life model and simulation of organisms in an ...
The talk presents an overview of current methods of computational intelligence (CI) called evolving ...
A new generation of computational intelligent systems is introduced in a generic framework of the ev...
The aim of this work is the genetic design of neural networks, which are able to classify within var...