Recently we have discovered an error in the implementation of the mutation operator in our earlier work on robust evolutionary algorithm design for socio-economic simulation. The original paper compared two commonly used approaches to socio-economic simulation. In the first approach parameter settings for the evolutionary algorithm are directly derived from the underlying economic model while in the second approach to social learning parameter settings are chosen so as to optimise evolutionary algorithm performance. Main conclusions of the original paper are that the first approach may hinder the performance of the evolutionary algorithm and thereby hinder agent learning, that is, that social learning evolutionary algorithms are ab...
The variability selection hypothesis predicts the adoption of versatile behaviors and survival strat...
The teleological language in the target article is ill-advised, as it obscures the question of wheth...
. Genetic algorithms are widely used as optimization and adaptation tools, and they became important...
Agent-based computational economics (ACE) combines elements from economics and computer science. In ...
Agent-based computational economics (ACE) combines elements from economics and computer science. In ...
This paper attempts to illustrate the importance of a coherent behavioural interpretation in applyin...
The fact that I have the opportunity to present a second edition of this monograph is an indicator f...
We are concerned with evolutionary algorithms that are employed for economic modeling purposes. We f...
textabstractAgent-based computational economics (ACE) combines elements from economics and computer ...
Learning and evolution are two adaptive processes in the natural world that have been modelled in th...
The use of numerical optimization techniques on simulation models is a developing field. Many of the...
AbstractThe proof of Theorem 6 in the paper by J. He and X. Yao [Artificial Intelligence 127 (1) (20...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
We present a mathematical analysis of the long-run behavior of genetic algorithms that are used for ...
. It has long been recognised that the choice of recombination and mutation operators and the rates ...
The variability selection hypothesis predicts the adoption of versatile behaviors and survival strat...
The teleological language in the target article is ill-advised, as it obscures the question of wheth...
. Genetic algorithms are widely used as optimization and adaptation tools, and they became important...
Agent-based computational economics (ACE) combines elements from economics and computer science. In ...
Agent-based computational economics (ACE) combines elements from economics and computer science. In ...
This paper attempts to illustrate the importance of a coherent behavioural interpretation in applyin...
The fact that I have the opportunity to present a second edition of this monograph is an indicator f...
We are concerned with evolutionary algorithms that are employed for economic modeling purposes. We f...
textabstractAgent-based computational economics (ACE) combines elements from economics and computer ...
Learning and evolution are two adaptive processes in the natural world that have been modelled in th...
The use of numerical optimization techniques on simulation models is a developing field. Many of the...
AbstractThe proof of Theorem 6 in the paper by J. He and X. Yao [Artificial Intelligence 127 (1) (20...
Parameter tuning in Evolutionary Algorithms (EA) generally result in suboptimal choices of values be...
We present a mathematical analysis of the long-run behavior of genetic algorithms that are used for ...
. It has long been recognised that the choice of recombination and mutation operators and the rates ...
The variability selection hypothesis predicts the adoption of versatile behaviors and survival strat...
The teleological language in the target article is ill-advised, as it obscures the question of wheth...
. Genetic algorithms are widely used as optimization and adaptation tools, and they became important...