In this paper we present a unified framework for extreme learning machines and reservoir computing (echo state networks), which can be physically implemented using a single nonlinear neuron subject to delayed feedback. The reservoir is built within the delay-line, employing a number of “virtual” neurons. These virtual neurons receive random projections from the input layer containing the information to be processed. One key advantage of this approach is that it can be implemented efficiently in hardware. We show that the reservoir computing implementation, in this case optoelectronic, is also capable to realize extreme learning machines, demonstrating the unified framework for both schemes in software as well as in hardware
Master’s degree in Physics of Complex Systems at the Universitat de Les Illes Balears, academic year...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
Echo state networks (ESNs) are large, random recurrent neural networks with a single trained linear ...
In this paper we present a unified framework for extreme learning machines and reservoir computing (...
Reservoir computing (RC) has attracted a lot of attention in the field of machine learning because o...
© 2015 Soriano, Brunner, Escalona-Morán, Mirasso and Fischer. To learn and mimic how the brain proce...
Delayed feedback systems are known to exhibit a rich dynamical behavior, showing a wide variety of d...
Reservoir Computing is a relatively new paradigm in the field of neural networks that has shown prom...
Reservoir Computing (RC) is a currently emerging new brain-inspired computational paradigm, which ap...
Delays are ubiquitous in biological systems, ranging from genetic regulatory networks and synaptic c...
Delays are ubiquitous in biological systems, ranging from genetic regulatory networks and synaptic c...
Today, except for mathematical operations, our brain functions much faster and more efficient than a...
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
Physical reservoir computing, a paradigm bearing the promise of energy-efficient high-performance co...
The recent progress in artificial intelligence has spurred renewed interest in hardware implementati...
Master’s degree in Physics of Complex Systems at the Universitat de Les Illes Balears, academic year...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
Echo state networks (ESNs) are large, random recurrent neural networks with a single trained linear ...
In this paper we present a unified framework for extreme learning machines and reservoir computing (...
Reservoir computing (RC) has attracted a lot of attention in the field of machine learning because o...
© 2015 Soriano, Brunner, Escalona-Morán, Mirasso and Fischer. To learn and mimic how the brain proce...
Delayed feedback systems are known to exhibit a rich dynamical behavior, showing a wide variety of d...
Reservoir Computing is a relatively new paradigm in the field of neural networks that has shown prom...
Reservoir Computing (RC) is a currently emerging new brain-inspired computational paradigm, which ap...
Delays are ubiquitous in biological systems, ranging from genetic regulatory networks and synaptic c...
Delays are ubiquitous in biological systems, ranging from genetic regulatory networks and synaptic c...
Today, except for mathematical operations, our brain functions much faster and more efficient than a...
Reservoir computing has recently been introduced as a new paradigm in the field of machine learning....
Physical reservoir computing, a paradigm bearing the promise of energy-efficient high-performance co...
The recent progress in artificial intelligence has spurred renewed interest in hardware implementati...
Master’s degree in Physics of Complex Systems at the Universitat de Les Illes Balears, academic year...
Neural networks are currently implemented on digital Von Neumann machines, which do not fully levera...
Echo state networks (ESNs) are large, random recurrent neural networks with a single trained linear ...