Concentric ESN: Assessing the Effect of Modularity in Cycle Reservoirs

05/23/2018
by   Davide Bacciu, et al.
0

The paper introduces concentric Echo State Network, an approach to design reservoir topologies that tries to bridge the gap between deterministically constructed simple cycle models and deep reservoir computing approaches. We show how to modularize the reservoir into simple unidirectional and concentric cycles with pairwise bidirectional jump connections between adjacent loops. We provide a preliminary experimental assessment showing how concentric reservoirs yield to superior predictive accuracy and memory capacity with respect to single cycle reservoirs and deep reservoir models.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
12/24/2018

Planar graphs without pairwise adjacent 3-,4-,5-, and 6-cycle are 4-choosable

Xu and Wu proved that if every 5-cycle of a planar graph G is not simult...
research
09/24/2019

Reservoir Topology in Deep Echo State Networks

Deep Echo State Networks (DeepESNs) recently extended the applicability ...
research
08/21/2023

Simple Cycle Reservoirs are Universal

Reservoir computation models form a subclass of recurrent neural network...
research
02/09/2023

The FluidFlower International Benchmark Study: Process, Modeling Results, and Comparison to Experimental Data

Successful deployment of geological carbon storage (GCS) requires an ext...
research
12/20/2022

Hopf Physical Reservoir Computer for Reconfigurable Sound Recognition

The Hopf oscillator is a nonlinear oscillator that exhibits limit cycle ...
research
05/07/2019

Performance boost of time-delay reservoir computing by non-resonant clock cycle

The time-delay-based reservoir computing setup has seen tremendous succe...
research
05/07/2017

DropIn: Making Reservoir Computing Neural Networks Robust to Missing Inputs by Dropout

The paper presents a novel, principled approach to train recurrent neura...

Please sign up or login with your details

Forgot password? Click here to reset