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Investigating echo state networks dynamics by means of recurrence
  analysis
v1v2 (latest)

Investigating echo state networks dynamics by means of recurrence analysis

26 January 2016
F. Bianchi
L. Livi
Cesare Alippi
ArXiv (abs)PDFHTML

Papers citing "Investigating echo state networks dynamics by means of recurrence analysis"

24 / 24 papers shown
Temporal Convolution Derived Multi-Layered Reservoir Computing
Temporal Convolution Derived Multi-Layered Reservoir Computing
Johannes Viehweg
Dominik Walther
Prof. Dr. -Ing. Patrick Mäder
AI4TS
244
5
0
09 Jul 2024
Probabilistic load forecasting with Reservoir Computing
Probabilistic load forecasting with Reservoir ComputingIEEE Access (IEEE Access), 2023
Michele Guerra
Simone Scardapane
F. Bianchi
BDL
210
5
0
24 Aug 2023
Universal Approximation of Linear Time-Invariant (LTI) Systems through
  RNNs: Power of Randomness in Reservoir Computing
Universal Approximation of Linear Time-Invariant (LTI) Systems through RNNs: Power of Randomness in Reservoir ComputingIEEE Journal on Selected Topics in Signal Processing (JSTSP), 2023
Shashank Jere
Lizhong Zheng
Karim A. Said
Lingjia Liu
286
9
0
04 Aug 2023
Excitatory/Inhibitory Balance Emerges as a Key Factor for RBN
  Performance, Overriding Attractor Dynamics
Excitatory/Inhibitory Balance Emerges as a Key Factor for RBN Performance, Overriding Attractor Dynamics
Emmanuel Calvet
Jean Rouat
B. Reulet
99
4
0
02 Aug 2023
Euler State Networks: Non-dissipative Reservoir Computing
Euler State Networks: Non-dissipative Reservoir ComputingNeurocomputing (Neurocomputing), 2022
Claudio Gallicchio
348
2
0
17 Mar 2022
Phase Transition Adaptation
Phase Transition AdaptationIEEE International Joint Conference on Neural Network (IJCNN), 2021
Claudio Gallicchio
Alessio Micheli
Luca Silvestri
227
3
0
20 Apr 2021
A journey in ESN and LSTM visualisations on a language task
A journey in ESN and LSTM visualisations on a language task
Alexandre Variengien
X. Hinaut
315
9
0
03 Dec 2020
Learn to Synchronize, Synchronize to Learn
Learn to Synchronize, Synchronize to Learn
Pietro Verzelli
Cesare Alippi
L. Livi
414
33
0
06 Oct 2020
Randomly Weighted, Untrained Neural Tensor Networks Achieve Greater
  Relational Expressiveness
Randomly Weighted, Untrained Neural Tensor Networks Achieve Greater Relational Expressiveness
Jinyung Hong
Theodore P. Pavlic
283
0
0
01 Jun 2020
Deep Randomized Neural Networks
Deep Randomized Neural Networks
Claudio Gallicchio
Simone Scardapane
OOD
377
72
0
27 Feb 2020
The Expressivity and Training of Deep Neural Networks: toward the Edge
  of Chaos?
The Expressivity and Training of Deep Neural Networks: toward the Edge of Chaos?
Gege Zhang
Gang-cheng Li
Ningwei Shen
Weidong Zhang
232
7
0
11 Oct 2019
Interpreting recurrent neural networks behaviour via excitable network
  attractors
Interpreting recurrent neural networks behaviour via excitable network attractors
Andrea Ceni
Peter Ashwin
L. Livi
442
53
0
27 Jul 2018
Hierarchical Bi-level Multi-Objective Evolution of Single- and
  Multi-layer Echo State Network Autoencoders for Data Representations
Hierarchical Bi-level Multi-Objective Evolution of Single- and Multi-layer Echo State Network Autoencoders for Data Representations
Naima Chouikhi
B. Ammar
Adel M. Alimi
130
1
0
04 Jun 2018
Learning representations for multivariate time series with missing data
  using Temporal Kernelized Autoencoders
Learning representations for multivariate time series with missing data using Temporal Kernelized Autoencoders
F. Bianchi
L. Livi
Karl Øyvind Mikalsen
Michael C. Kampffmeyer
Robert Jenssen
AI4TS
296
11
0
09 May 2018
Potentials and Limitations of Deep Neural Networks for Cognitive Robots
Potentials and Limitations of Deep Neural Networks for Cognitive Robots
Doreen Jirak
S. Wermter
100
5
0
02 May 2018
Genesis of Basic and Multi-Layer Echo State Network Recurrent
  Autoencoders for Efficient Data Representations
Genesis of Basic and Multi-Layer Echo State Network Recurrent Autoencoders for Efficient Data Representations
Naima Chouikhi
B. Ammar
Adel M. Alimi
131
13
0
24 Apr 2018
Reservoir computing approaches for representation and classification of
  multivariate time series
Reservoir computing approaches for representation and classification of multivariate time series
F. Bianchi
Simone Scardapane
Sigurd Løkse
Robert Jenssen
AI4TS
385
197
0
21 Mar 2018
Bidirectional deep-readout echo state networks
Bidirectional deep-readout echo state networks
F. Bianchi
Simone Scardapane
Sigurd Løkse
Robert Jenssen
BDLAI4TS
158
2
0
17 Nov 2017
Integer Echo State Networks: Efficient Reservoir Computing for Digital
  Hardware
Integer Echo State Networks: Efficient Reservoir Computing for Digital HardwareIEEE Transactions on Neural Networks and Learning Systems (IEEE TNNLS), 2017
Denis Kleyko
E. P. Frady
Mansour Kheffache
Evgeny Osipov
537
42
0
01 Jun 2017
An overview and comparative analysis of Recurrent Neural Networks for
  Short Term Load Forecasting
An overview and comparative analysis of Recurrent Neural Networks for Short Term Load Forecasting
F. Bianchi
E. Maiorino
Michael C. Kampffmeyer
A. Rizzi
Robert Jenssen
AI4TS
311
239
0
11 May 2017
Temporal Overdrive Recurrent Neural Network
Temporal Overdrive Recurrent Neural NetworkIEEE International Joint Conference on Neural Network (IJCNN), 2017
F. Bianchi
Michael C. Kampffmeyer
E. Maiorino
Robert Jenssen
AI4TS
274
8
0
18 Jan 2017
Multiplex visibility graphs to investigate recurrent neural networks
  dynamics
Multiplex visibility graphs to investigate recurrent neural networks dynamics
F. Bianchi
L. Livi
Cesare Alippi
Robert Jenssen
GNN
335
39
0
10 Sep 2016
Training Echo State Networks with Regularization through Dimensionality
  Reduction
Training Echo State Networks with Regularization through Dimensionality ReductionCognitive Computation (Cogn Comput), 2016
Sigurd Løkse
F. Bianchi
Robert Jenssen
AI4TS
226
65
0
16 Aug 2016
Determination of the edge of criticality in echo state networks through
  Fisher information maximization
Determination of the edge of criticality in echo state networks through Fisher information maximization
L. Livi
F. Bianchi
Cesare Alippi
274
67
0
11 Mar 2016
1
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