This thesis develops a new approach to evolving Binary Decision Diagrams, and uses it to study evolvability issues. For reasons that are not yet fully understood, current approaches to artificial evolution fail to exhibit the evolvability so readily exhibited in nature. To be able to apply evolvability to artificial evolution the field must first understand and characterise it; this will then lead to systems which are much more capable than they are currently. An experimental approach is taken. Carefully crafted, controlled experiments elucidate the mechanisms and properties that facilitate evolvability, focusing on the roles and interplay between neutrality, modularity, gradualism, robustness and diversity. Evolvability is found to emerge ...
This dissertation clarifies the concept of evolvability, the increased capacity of some organisms or...
Living organisms function in accordance with complex mechanisms that operate in different ways depen...
Evolutionary algorithms (EA) are optimization algorithms inspired by the neo-dar winian theory of ev...
This thesis develops a new approach to evolving Binary Decision Diagrams, and uses it to study evolv...
AbstractEvolvability in its simplest form is the ability of a population to respond to directional s...
The central goal of this thesis is to provide additional criteria towards implementing open-ended ev...
The central goal of this thesis is to provide additional criteria towards implementing open-ended ev...
Evolutionary dynamics arise from the interplay of mutation and selection. Fundamentally, these two p...
This thesis provides a framework for describing a canonical evolutionary system. Populations of indi...
This paper studies a family of redundant binary representations NNg(l, k), which are based on the ma...
One hallmark of natural organisms is their significant evolvability, i.e.,their increased potential ...
The developmental mapping from genotype to phenotype is responsible for much of the evolvability (ad...
Over the last years, the effects of neutrality have attracted the attention of many researchers in t...
Abstract- Understanding how systems can be designed to be evolvable is fundamental to research in op...
In this paper, we investigate a neutral epoch during an optimisation run with complex genotype-to-fi...
This dissertation clarifies the concept of evolvability, the increased capacity of some organisms or...
Living organisms function in accordance with complex mechanisms that operate in different ways depen...
Evolutionary algorithms (EA) are optimization algorithms inspired by the neo-dar winian theory of ev...
This thesis develops a new approach to evolving Binary Decision Diagrams, and uses it to study evolv...
AbstractEvolvability in its simplest form is the ability of a population to respond to directional s...
The central goal of this thesis is to provide additional criteria towards implementing open-ended ev...
The central goal of this thesis is to provide additional criteria towards implementing open-ended ev...
Evolutionary dynamics arise from the interplay of mutation and selection. Fundamentally, these two p...
This thesis provides a framework for describing a canonical evolutionary system. Populations of indi...
This paper studies a family of redundant binary representations NNg(l, k), which are based on the ma...
One hallmark of natural organisms is their significant evolvability, i.e.,their increased potential ...
The developmental mapping from genotype to phenotype is responsible for much of the evolvability (ad...
Over the last years, the effects of neutrality have attracted the attention of many researchers in t...
Abstract- Understanding how systems can be designed to be evolvable is fundamental to research in op...
In this paper, we investigate a neutral epoch during an optimisation run with complex genotype-to-fi...
This dissertation clarifies the concept of evolvability, the increased capacity of some organisms or...
Living organisms function in accordance with complex mechanisms that operate in different ways depen...
Evolutionary algorithms (EA) are optimization algorithms inspired by the neo-dar winian theory of ev...