Delays are ubiquitous in biological systems, ranging from genetic regulatory networks and synaptic conductances, to predator/pray population interactions. The evidence is mounting, not only to the presence of delays as physical constraints in signal propagation speed, but also to their functional role in providing dynamical diversity to the systems that comprise them. The latter observation in biological systems inspired the recent development of a computational architecture that harnesses this dynamical diversity, by delay-coupling a single nonlinear element to itself. This architecture is a particular realization of Reservoir Computing, where stimuli are injected into the system in time rather than in space as is the case with classical r...
Novel methods for information processing are highly desired in our information-driven society. Inspi...
The interplay between randomness and optimization has always been a major theme in the design of neu...
Physical dynamical systems are able to process information in a nontrivial manner. The machine learn...
Delays are ubiquitous in biological systems, ranging from genetic regulatory networks and synaptic c...
[eng] Today, except for mathematical operations, our brain functions much faster and more efficient ...
© 2015 Soriano, Brunner, Escalona-Morán, Mirasso and Fischer. To learn and mimic how the brain proce...
Novel methods for information processing are highly desired in our information-driven society. Inspi...
Reservoir computing (RC) has attracted a lot of attention in the field of machine learning because o...
© 2015 Massachusetts Institute of Technology. Supplementing a differential equation with delays resu...
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
We show that many delay-based reservoir computers considered in the literature can be characterized ...
2021 International Joint Conference on Neural Networks (IJCNN, 18-22 July 2021).Delay-based reservoi...
Delayed feedback systems are known to exhibit a rich dynamical behavior, showing a wide variety of d...
The recent progress in artificial intelligence has spurred renewed interest in hardware implementati...
In this paper we present a unified framework for extreme learning machines and reservoir computing (...
Novel methods for information processing are highly desired in our information-driven society. Inspi...
The interplay between randomness and optimization has always been a major theme in the design of neu...
Physical dynamical systems are able to process information in a nontrivial manner. The machine learn...
Delays are ubiquitous in biological systems, ranging from genetic regulatory networks and synaptic c...
[eng] Today, except for mathematical operations, our brain functions much faster and more efficient ...
© 2015 Soriano, Brunner, Escalona-Morán, Mirasso and Fischer. To learn and mimic how the brain proce...
Novel methods for information processing are highly desired in our information-driven society. Inspi...
Reservoir computing (RC) has attracted a lot of attention in the field of machine learning because o...
© 2015 Massachusetts Institute of Technology. Supplementing a differential equation with delays resu...
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
We show that many delay-based reservoir computers considered in the literature can be characterized ...
2021 International Joint Conference on Neural Networks (IJCNN, 18-22 July 2021).Delay-based reservoi...
Delayed feedback systems are known to exhibit a rich dynamical behavior, showing a wide variety of d...
The recent progress in artificial intelligence has spurred renewed interest in hardware implementati...
In this paper we present a unified framework for extreme learning machines and reservoir computing (...
Novel methods for information processing are highly desired in our information-driven society. Inspi...
The interplay between randomness and optimization has always been a major theme in the design of neu...
Physical dynamical systems are able to process information in a nontrivial manner. The machine learn...