Master Memory Function for Delay-Based Reservoir Computers With Single-Variable Dynamics

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Date
2022
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[New York, NY] : IEEE
Abstract

We show that many delay-based reservoir computers considered in the literature can be characterized by a universal master memory function (MMF). Once computed for two independent parameters, this function provides linear memory capacity for any delay-based single-variable reservoir with small inputs. Moreover, we propose an analytical description of the MMF that enables its efficient and fast computation. Our approach can be applied not only to single-variable delay-based reservoirs governed by known dynamical rules, such as the Mackey–Glass or Stuart–Landau-like systems, but also to reservoirs whose dynamical model is not available.

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Keywords
Machine learning, nonlinear dynamics, reservoir computing
Citation
Köster, F., Yanchuk, S., & Lüdge, K. (2022). Master Memory Function for Delay-Based Reservoir Computers With Single-Variable Dynamics. https://doi.org//10.1109/tnnls.2022.3220532
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CC BY 4.0 Unported