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Reservoir computing (RC) has been shown to be a simple and effective framework to learn dynamics from data. Most work on RC has focused on learning systems with a single chaotic attractor. In this talk, I will show that learning multistable systems (e.g., reconstructing basins of attraction) poses unique challenges for both traditional RC and next-generation reservoir computing (NGRC) frameworks. For NGRC, I will also discuss another curious property: When given more (noise-free) training data, sometimes the prediction of NGRC becomes much worse. Join by phone +1-415-655-0002 US Toll Access code: 2631 343 9655 Host PIN: 3793 |