We investigate information processing in randomly connected recurrent neural networks. It has been shown previously that the computational capabilities of these networks are maximized when the recurrent layer is close to the border between a stable and an unstable dynamics regime, the so called edge of chaos. The reasons, however, for this maximized performance are not completely understood. We adopt an information-theoretical framework and are for the first time able to quantify the computational capabilities between elements of these networks directly as they undergo the phase transition to chaos. Specifically, we present evidence that both information transfer and storage in the recurrent layer are maximized close to this phase transitio...
Autonomous, randomly coupled, neural networks display a transition to chaos at a critical coupling s...
Autonomous randomly coupled neural networks display a transition to chaos at a critical coupling str...
Among the various architectures of Recurrent Neural Networks, Echo State Networks (ESNs) emerged due...
Echo state networks represent a special type of recurrent neural networks. Recent papers stated that...
Recurrent networks of randomly coupled rate neurons display a transition to chaos at a critical coup...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
Most theoretical studies of the computational capabilities of balanced, recurrent E/I networks assu...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
Highly connected recurrent neural networks often produce chaotic dynamics, meaning their precise act...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
International audienceSpontaneous activity found in neural networks usually results in a reduction o...
Highly connected recurrent neural networks often produce chaotic dynamics, meaning their precise act...
Critical dynamics have been postulated as an ideal regime for neuronal networks in the brain, consid...
Cortical networks are strongly recurrent, and neurons have intrinsic temporal dynamics. This sets th...
The spectral structure, the synchronization of cells and the number of degrees of freedom are intima...
Autonomous, randomly coupled, neural networks display a transition to chaos at a critical coupling s...
Autonomous randomly coupled neural networks display a transition to chaos at a critical coupling str...
Among the various architectures of Recurrent Neural Networks, Echo State Networks (ESNs) emerged due...
Echo state networks represent a special type of recurrent neural networks. Recent papers stated that...
Recurrent networks of randomly coupled rate neurons display a transition to chaos at a critical coup...
The remarkable properties of information-processing by biological and artificial neuronal networks a...
Most theoretical studies of the computational capabilities of balanced, recurrent E/I networks assu...
The neural net computer simulations which will be presented here are based on the acceptance of a se...
Highly connected recurrent neural networks often produce chaotic dynamics, meaning their precise act...
Random recurrent networks facilitate the tractable analysis of large networks. The spectrum of the c...
International audienceSpontaneous activity found in neural networks usually results in a reduction o...
Highly connected recurrent neural networks often produce chaotic dynamics, meaning their precise act...
Critical dynamics have been postulated as an ideal regime for neuronal networks in the brain, consid...
Cortical networks are strongly recurrent, and neurons have intrinsic temporal dynamics. This sets th...
The spectral structure, the synchronization of cells and the number of degrees of freedom are intima...
Autonomous, randomly coupled, neural networks display a transition to chaos at a critical coupling s...
Autonomous randomly coupled neural networks display a transition to chaos at a critical coupling str...
Among the various architectures of Recurrent Neural Networks, Echo State Networks (ESNs) emerged due...