Revisiting multifunctionality in reservoir computing
Revisiting multifunctionality in reservoir computing
Multifunctionality is ubiquitous in biological neurons. Several studies have translated the concept to artificial neural networks as well. Recently, multifunctionality in reservoir computing (RC) has gained the widespread attention of researchers. Multistable dynamics of the reservoir can be configured to capture multiple tasks, each by one of the co-existing attractors. However, there are several limitations in the applicability of this approach. So far, multifunctional RC has been shown to be able to reconstruct different attractor climates only when the attractors are well separated in the phase space. We propose a more flexible reservoir computing scheme capable of multifunctioning beyond the earlier limitations. The proposed architecture holds striking similarity with the multifunctional biological neural networks and showcases superior performance. It is capable of learning multiple chaotic attractors with overlapping phase space. We successfully train the RC to achieve multifunctionality with wide range of tasks.
Swarnendu Mandal、Kazuyuki Aihara
计算技术、计算机技术
Swarnendu Mandal,Kazuyuki Aihara.Revisiting multifunctionality in reservoir computing[EB/OL].(2025-04-16)[2025-05-24].https://arxiv.org/abs/2504.12621.点此复制
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