International audienceThe Continuous Neural Field Theory introduces biologically-inspired competition mechanisms in computational models of perception and action. This paper deals with the use of Genetic Algorithms to optimize its parameters, as to guarantee the emergence of robust cognitive properties. Such properties include the tracking of initially salient stimuli despite strong noise and distracters. Interactions between the parameter values, input dynamics and accuracy of model, as well as their implications for Genetic Algorithms are discussed. The fitness function and set of scenarios used to evaluate the parameters through simulation must be carefully chosen. Experimental results reflect an ineluctable tradeoff between generality a...
A non-dominated sorting genetic algorithm is used to evolve models of learning from different theori...
n the study of neurosciences, and of complex biological systems in general, there is frequently a ne...
Computational neuro-genetic models (CNGM) combine two dynamic models – a gene regulatory network (GR...
International audienceDynamic neural fields have been proposed as a continuous model of a neural tis...
International audiencePredictive capabilities are added to the competition mechanism known as the Co...
Evolutionary computation has been around ever since the late 50s. This thesis aims at elaborate on g...
Abstract Novel neuro-fuzzy techniques are used to dynamically control parameter settings of genetic ...
This paper documents experiments performed using a GA to optimise the parameters of a dynamic neural...
Genetic Algorithms are a class of powerful, robust search techniques based on genetic inheritance an...
A formalism for modelling the dynamics of genetic algorithms using methods from statistical physics,...
International audienceThis paper introduces a sparse implementation of the Continuum Neural Field Th...
This paper proposes a model selection methodology for feedforward network models based on the geneti...
Neuroevolutionary machine learning is an emerging topic in the evolutionary computation field and en...
The present work initiates a research line in the study of artificial life, through a preliminary ch...
Most contemporary connectionist approaches to AI use an Aritifical Neural Network (ANN) approach whi...
A non-dominated sorting genetic algorithm is used to evolve models of learning from different theori...
n the study of neurosciences, and of complex biological systems in general, there is frequently a ne...
Computational neuro-genetic models (CNGM) combine two dynamic models – a gene regulatory network (GR...
International audienceDynamic neural fields have been proposed as a continuous model of a neural tis...
International audiencePredictive capabilities are added to the competition mechanism known as the Co...
Evolutionary computation has been around ever since the late 50s. This thesis aims at elaborate on g...
Abstract Novel neuro-fuzzy techniques are used to dynamically control parameter settings of genetic ...
This paper documents experiments performed using a GA to optimise the parameters of a dynamic neural...
Genetic Algorithms are a class of powerful, robust search techniques based on genetic inheritance an...
A formalism for modelling the dynamics of genetic algorithms using methods from statistical physics,...
International audienceThis paper introduces a sparse implementation of the Continuum Neural Field Th...
This paper proposes a model selection methodology for feedforward network models based on the geneti...
Neuroevolutionary machine learning is an emerging topic in the evolutionary computation field and en...
The present work initiates a research line in the study of artificial life, through a preliminary ch...
Most contemporary connectionist approaches to AI use an Aritifical Neural Network (ANN) approach whi...
A non-dominated sorting genetic algorithm is used to evolve models of learning from different theori...
n the study of neurosciences, and of complex biological systems in general, there is frequently a ne...
Computational neuro-genetic models (CNGM) combine two dynamic models – a gene regulatory network (GR...