Attractor-merging Crises and Intermittency in Reservoir Computing
Attractor-merging Crises and Intermittency in Reservoir Computing
Reservoir computing can embed attractors into random neural networks (RNNs), generating a ``mirror'' of a target attractor because of its inherent symmetrical constraints. In these RNNs, we report that an attractor-merging crisis accompanied by intermittency emerges simply by adjusting the global parameter. We further reveal its underlying mechanism through a detailed analysis of the phase-space structure and demonstrate that this bifurcation scenario is intrinsic to a general class of RNNs, independent of training data.
Tempei Kabayama、Motomasa Komuro、Yasuo Kuniyoshi、Kazuyuki Aihara、Kohei Nakajima
计算技术、计算机技术
Tempei Kabayama,Motomasa Komuro,Yasuo Kuniyoshi,Kazuyuki Aihara,Kohei Nakajima.Attractor-merging Crises and Intermittency in Reservoir Computing[EB/OL].(2025-04-17)[2025-05-03].https://arxiv.org/abs/2504.12695.点此复制
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