JSAI2025

Presentation information

General Session

General Session » GS-2 Machine learning

[2S1-GS-2] Machine learning:

Wed. May 28, 2025 9:00 AM - 10:40 AM Room S (Room 701-2)

座長:森山 甲一(名古屋工業大学)

9:40 AM - 10:00 AM

[2S1-GS-2-03] Reservoir computing with generalized readout based on generalized synchronization

〇Akane Ohkubo1, Masanobu Inubushi1,2,3 (1. Tokyo University of Science, 2. Osaka Univ., 3. Cambridge Univ.)

Keywords:Neural network

Reservoir computing is a machine learning framework that exploits nonlinear dynamics, exhibiting significant computational capabilities. One of the defining characteristics of reservoir computing is that only linear output, given by a linear combination of reservoir variables, is trained. Inspired by recent mathematical studies of generalized synchronization, we propose a novel reservoir computing framework with a generalized readout, including a nonlinear combination of reservoir variables. Learning prediction tasks can be formulated as an approximation problem of a target map that provides true prediction values. Analysis of the map suggests an interpretation that the linear readout corresponds to a linearization of the map, and further that the generalized readout corresponds to a higher-order approximation of the map. Numerical study shows that introducing a generalized readout, corresponding to the quadratic and cubic approximation of the map, leads to a significant improvement in accuracy and an unexpected enhancement in robustness in the short- and long-term prediction of Lorenz and Rössler chaos. Towards applications of physical reservoir computing, we particularly focus on how the generalized readout effectively exploits low-dimensional reservoir dynamics.

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