Evolutionary algorithms are playing an increasingly important role as search methods in cognitive science domains. In this study, methodological issues in the use of evolutionary algorithms were investigated via simulations in which procedures were systematically varied to modify the selection pressures on populations of evolving agents. Traditional roulette wheel, tournament, and variations of these selection algorithms were compared on the “needle-in-a-haystack” problem developed by Hinton and Nowlan in their 1987 study of the Baldwin effect. The task is an important one for cognitive science, as it demonstrates the power of learning as a local search technique in smoothing a fitness landscape that lacks gradient information. One aspect t...
For many years, artificial intelligence research has beenfocusing on inventing new algorithms and ap...
Evolutionary algorithms are powerful techniques for optimisation whose operation principles are insp...
A new deterministic greedy genetic algorithm selection operator with very high selection pressure, d...
is an aid to evolutionary search in hierarchical modular tasks. It brings together two major areas ...
Evolutionary algorithms are effective general-purpose techniques for solving optimization problems. ...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
Inspired by organism evolution, evolutionary algorithms have attracted research interests for severa...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
A non-dominated sorting genetic algorithm is used to evolve models of learning from different theori...
Evolutionary computation (EC) is a kind of optimization methodology inspired by the mechanisms of bi...
This paper summarizes recent research on competition-based learning procedures performed by the Navy...
Starting from some simple observations on a popular selection method in Evolutionary Algorithms (EAs...
AbstractMany variants of evolutionary algorithms have been designed and applied. The experimental kn...
How does the brain find objects in cluttered visual environments? For decades researchers have emplo...
For many years, artificial intelligence research has beenfocusing on inventing new algorithms and ap...
Evolutionary algorithms are powerful techniques for optimisation whose operation principles are insp...
A new deterministic greedy genetic algorithm selection operator with very high selection pressure, d...
is an aid to evolutionary search in hierarchical modular tasks. It brings together two major areas ...
Evolutionary algorithms are effective general-purpose techniques for solving optimization problems. ...
Selection methods in Evolutionary Algorithms, including Genetic Algorithms, Evolution Strategies (ES...
Evolutionary algorithm (EA) is an umbrella term used to describe population-based stochastic direct ...
Inspired by organism evolution, evolutionary algorithms have attracted research interests for severa...
Evolutionary Computation (EC) approaches are inspired by nature and solve optimization problems in a...
A non-dominated sorting genetic algorithm is used to evolve models of learning from different theori...
Evolutionary computation (EC) is a kind of optimization methodology inspired by the mechanisms of bi...
This paper summarizes recent research on competition-based learning procedures performed by the Navy...
Starting from some simple observations on a popular selection method in Evolutionary Algorithms (EAs...
AbstractMany variants of evolutionary algorithms have been designed and applied. The experimental kn...
How does the brain find objects in cluttered visual environments? For decades researchers have emplo...
For many years, artificial intelligence research has beenfocusing on inventing new algorithms and ap...
Evolutionary algorithms are powerful techniques for optimisation whose operation principles are insp...
A new deterministic greedy genetic algorithm selection operator with very high selection pressure, d...