Artificial gene regulatory networks (GRNs) are biologically inspired dynamical systems used to control various kinds of agents, from the cells in developmental models to embodied robot swarms. Most recent work uses a genetic algorithm (GA) or an evolution strategy in order to optimize the network for a specific task. However, the empirical performances of these algorithms are unsatisfactory. This paper presents an algorithm that primarily exploits a network distance metric, which allows genetic similarity to be used for speciation and variation of GRNs. This algorithm, inspired by the successful neuroevolution of augmenting topologies algorithm's use in evolving neural networks and compositional pattern-producing networks, is based on a spe...
Genetic Regulatory Networks (GRNs) in biological organisms are primary engines for cells to enact th...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
Artificial gene regulatory networks (GRNs) are biologically inspired dynamical systems used to contr...
Artificial gene regulatory networks (GRNs) are biologically inspired dynamical systems used to contr...
Artificial gene regulatory networks (GRNs) are biologically inspired dynamical systems used to contr...
International audienceWe evolve a Genetic Regulatory Network (GRN) in a three dimensional morphogen ...
We evolve a Genetic Regulatory Network (GRN) in a three dimensional morphogen gradient environment t...
Evolutionary algorithms (EAs) have been successfully used in many studies for evolving both the stru...
Dynamical interactions among sets of genes (and their products) regulate developmental processes and...
In this thesis an evolutionary method, inspired by gene regulation in bio-logical systems, is used t...
Dynamical interactions among sets of genes (and their products) regulate developmental processes and...
Abstract. Genetic Regulation Networks (GRNs) are a model of the mechanisms by which a cell regulates...
“The original publication is available at www.springerlink.com”. Copyright SpringerA genetic algorit...
In this thesis, we present two approaches for designing genetic regulatory networks in the field of ...
Genetic Regulatory Networks (GRNs) in biological organisms are primary engines for cells to enact th...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
Artificial gene regulatory networks (GRNs) are biologically inspired dynamical systems used to contr...
Artificial gene regulatory networks (GRNs) are biologically inspired dynamical systems used to contr...
Artificial gene regulatory networks (GRNs) are biologically inspired dynamical systems used to contr...
International audienceWe evolve a Genetic Regulatory Network (GRN) in a three dimensional morphogen ...
We evolve a Genetic Regulatory Network (GRN) in a three dimensional morphogen gradient environment t...
Evolutionary algorithms (EAs) have been successfully used in many studies for evolving both the stru...
Dynamical interactions among sets of genes (and their products) regulate developmental processes and...
In this thesis an evolutionary method, inspired by gene regulation in bio-logical systems, is used t...
Dynamical interactions among sets of genes (and their products) regulate developmental processes and...
Abstract. Genetic Regulation Networks (GRNs) are a model of the mechanisms by which a cell regulates...
“The original publication is available at www.springerlink.com”. Copyright SpringerA genetic algorit...
In this thesis, we present two approaches for designing genetic regulatory networks in the field of ...
Genetic Regulatory Networks (GRNs) in biological organisms are primary engines for cells to enact th...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...