International audienceA novel approach to generating scale-free network topologies is introduced, based on an existing artificial Gene Regulatory Network model. From this model, different interaction networks can be extracted, based on an activation threshold. By using an Evolutionary Computation approach, the model is allowed to evolve, in order to reach specific network statistical measures. The results obtained show that, when the model uses a duplication and divergence initialisation, such as seen in nature, the resulting regulation networks not only are closer in topology to scale-free networks, but also exhibit a much higher potential for evolution
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
A novel approach to generating scale-free network topologies is introduced, based on an existing art...
IEEE Congress on Evolutionary Computation (CEC 2008) Hong-Kong, China, 1-6 June 2008A novel approach...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
IEEE Congress on Evolutionary Computation (CEC 2008) Hong-Kong, China, 1-6 June 2008A novel approach...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
A novel approach to generating scale-free network topologies is introduced, based on an existing art...
IEEE Congress on Evolutionary Computation (CEC 2008) Hong-Kong, China, 1-6 June 2008A novel approach...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
International audienceA novel approach to generating scale-free network topologies is introduced, ba...
IEEE Congress on Evolutionary Computation (CEC 2008) Hong-Kong, China, 1-6 June 2008A novel approach...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...
International audienceThe generation of network topologies with specific, user-specified statistical...