2024
DOI: 10.1038/s41598-024-59143-y
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Impact of time-history terms on reservoir dynamics and prediction accuracy in echo state networks

Yudai Ebato,
Sou Nobukawa,
Yusuke Sakemi
et al.

Abstract: The echo state network (ESN) is an excellent machine learning model for processing time-series data. This model, utilising the response of a recurrent neural network, called a reservoir, to input signals, achieves high training efficiency. Introducing time-history terms into the neuron model of the reservoir is known to improve the time-series prediction performance of ESN, yet the reasons for this improvement have not been quantitatively explained in terms of reservoir dynamics characteristics. Therefore, we … Show more

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