2020
DOI: 10.4236/jcc.2020.812011
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A Prediction Method Based on Improved Echo State Network for COVID-19 Nonlinear Time Series

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“…Then, the firing rates of MSTd neurons encoding the relative importance of the core features to the current visual input are transferred to the readout decision model. In this paper, an echo state network (ESN) proposed by Jaeger [30][31][32] is utilized as the decision model. It consists of a random sparse network (reservoir) and one readout layer.…”
Section: Decision Model Of Echo State Networkmentioning
confidence: 99%
“…Then, the firing rates of MSTd neurons encoding the relative importance of the core features to the current visual input are transferred to the readout decision model. In this paper, an echo state network (ESN) proposed by Jaeger [30][31][32] is utilized as the decision model. It consists of a random sparse network (reservoir) and one readout layer.…”
Section: Decision Model Of Echo State Networkmentioning
confidence: 99%