We introduce a novel Reservoir Computing (RC) approach for multi-dimensional temporal signals. Our proposal is based on routing the different dimensions of the driving input towards different dynamical sub-modules in a multi-reservoir architecture. At the same time, controllable interconnections among the sub-modules allow modeling the interplay between the different dynamics that might be required by the task. Experiments on synthetic and real-world time-series classification problems clearly show the advantages of the proposed approach in dealing with multi-dimensional signals in comparison to standard RC neural networks

Input Routed Echo State Networks

Gallicchio, Claudio
;
Micheli, Alessio
2022-01-01

Abstract

We introduce a novel Reservoir Computing (RC) approach for multi-dimensional temporal signals. Our proposal is based on routing the different dimensions of the driving input towards different dynamical sub-modules in a multi-reservoir architecture. At the same time, controllable interconnections among the sub-modules allow modeling the interplay between the different dynamics that might be required by the task. Experiments on synthetic and real-world time-series classification problems clearly show the advantages of the proposed approach in dealing with multi-dimensional signals in comparison to standard RC neural networks
2022
9782875870841
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11568/1187308
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