International audienceA possible alternative to topology fine-tuning for Neural Net- work (NN) optimization is to use Echo State Networks (ESNs), recurrent NNs built upon a large reservoir of sparsely randomly connected neurons. The promises of ESNs have been fulfilled for supervised learning tasks, but unsupervised ones, e.g. control problems, require more flexible optimization methods – such as Evolutionary Algorithms. This paper proposes to apply CMA-ES, the state-of-the-art method in evolutionary continuous parameter optimization, to the evolutionary learning of ESN parameters. First, a standard supervised learning problem is used to validate the approach and compare it to the standard one. But the flexibility of Evolutionary optimizati...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
This thesis investigates the use of Echo State Networks (ESNs) in unsupervised learning environments...
which efficiently adapts the covariance matrix of the mutation distribution, to the optimization of ...
International audienceA possible alternative to topology fine-tuning for Neural Net- work (NN) optim...
International audienceA possible alternative to topology fine-tuning for Neural Net- work (NN) optim...
Abstract. A possible alternative to topology fine-tuning for Neural Net-work (NN) optimization is to...
International audienceA possible alternative to topology fine-tuning for Neural Net- work (NN) optim...
Krause AF, Dürr V, Bläsing B, Schack T. Evolutionary optimization of echo state networks: multiple m...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
This thesis investigates the use of Echo State Networks (ESNs) in unsupervised learning environments...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
This thesis investigates the use of Echo State Networks (ESNs) in unsupervised learning environments...
which efficiently adapts the covariance matrix of the mutation distribution, to the optimization of ...
International audienceA possible alternative to topology fine-tuning for Neural Net- work (NN) optim...
International audienceA possible alternative to topology fine-tuning for Neural Net- work (NN) optim...
Abstract. A possible alternative to topology fine-tuning for Neural Net-work (NN) optimization is to...
International audienceA possible alternative to topology fine-tuning for Neural Net- work (NN) optim...
Krause AF, Dürr V, Bläsing B, Schack T. Evolutionary optimization of echo state networks: multiple m...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
This thesis investigates the use of Echo State Networks (ESNs) in unsupervised learning environments...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
International audienceEcho State Networks (ESN) have demonstrated their efficiency in supervised lea...
This thesis investigates the use of Echo State Networks (ESNs) in unsupervised learning environments...
which efficiently adapts the covariance matrix of the mutation distribution, to the optimization of ...