The evolution of explicitly represented topologies such as graphs involves devising methods for mutating, comparing and combining structures in meaningful ways and identifying and maintaining the necessary topological diversity. Research has been conducted in the area of the evolution of trees in genetic programming and of neural networks and some of these problems have been addressed independently by the different research communities. In the domain of neural networks, NEAT (Neuroevolution of Augmenting Topologies) has shown to be a successful method for evolving increasingly complex networks. This system\u27s success is based on three interrelated elements: speciation, marking of historical information in topologies, and initializing sear...
Genetic programming is a promising variant of genetic algorithms that evolves dynamic, hierarchical ...
The recognition of useful information, its retention in memory, and subsequent use plays an importan...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...
This paper presents methods to visualize the structure of trees that occur in genetic programming. T...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
Bloat is one of the most widely studied phenomena in Genetic Programming (GP), it is normally define...
his paper describes Multiple Interactive Outputs in a Single Tree (MIOST), a new form of Genetic Pro...
We develop a tree-based genetic programming system, capable of modelling evolvability during evoluti...
Evolutionary computation has been around ever since the late 50s. This thesis aims at elaborate on g...
We extend our analysis of repetitive patterns found in genetic programming genomes to tree based GP....
Learning is an essential attribute of an intelligent system. A proper understanding of the process o...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...
A Lindenmayer system is a parallel rewriting system that generates graphic shapes using several rule...
In this work, we explore and study the implication of having more than one output on a genetic progr...
This thesis studies the use of a generative representation with a genetic algorithm (GA) to solve to...
Genetic programming is a promising variant of genetic algorithms that evolves dynamic, hierarchical ...
The recognition of useful information, its retention in memory, and subsequent use plays an importan...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...
This paper presents methods to visualize the structure of trees that occur in genetic programming. T...
Genetic Programming is an evolutionary computation technique which searches for those computer progr...
Bloat is one of the most widely studied phenomena in Genetic Programming (GP), it is normally define...
his paper describes Multiple Interactive Outputs in a Single Tree (MIOST), a new form of Genetic Pro...
We develop a tree-based genetic programming system, capable of modelling evolvability during evoluti...
Evolutionary computation has been around ever since the late 50s. This thesis aims at elaborate on g...
We extend our analysis of repetitive patterns found in genetic programming genomes to tree based GP....
Learning is an essential attribute of an intelligent system. A proper understanding of the process o...
One serious problem of standard Genetic Programming (GP) is that evolved structures appear to drift ...
A Lindenmayer system is a parallel rewriting system that generates graphic shapes using several rule...
In this work, we explore and study the implication of having more than one output on a genetic progr...
This thesis studies the use of a generative representation with a genetic algorithm (GA) to solve to...
Genetic programming is a promising variant of genetic algorithms that evolves dynamic, hierarchical ...
The recognition of useful information, its retention in memory, and subsequent use plays an importan...
The thesis is about linear genetic programming (LGP), a machine learning approach that evolves compu...