Park Il Memming, Ságodi Ábel, Sokół Piotr Aleksander
ArXiv. 2023 Aug 24:arXiv:2308.12585v1.
Neural dynamical systems with stable attractor structures, such as point attractors and continuous attractors, are hypothesized to underlie meaningful temporal behavior that requires working memory. However, working memory may not support useful learning signals necessary to adapt to changes in the temporal structure of the environment. We show that in addition to the continuous attractors that are widely implicated, periodic and quasi-periodic attractors can also support learning arbitrarily long temporal relationships. Unlike the continuous attractors that suffer from the fine-tuning problem, the less explored quasi-periodic attractors are uniquely qualified for learning to produce temporally structured behavior. Our theory has broad implications for the design of artificial learning systems and makes predictions about observable signatures of biological neural dynamics that can support temporal dependence learning and working memory. Based on our theory, we developed a new initialization scheme for artificial recurrent neural networks that outperforms standard methods for tasks that require learning temporal dynamics. Moreover, we propose a robust recurrent memory mechanism for integrating and maintaining head direction without a ring attractor.
具有稳定吸引子结构的神经动力学系统,如点吸引子和连续吸引子,被认为是需要工作记忆的有意义时间行为的基础。然而,工作记忆可能不支持适应环境时间结构变化所需的有用学习信号。我们表明,除了广泛涉及的连续吸引子外,周期性和准周期性吸引子也可以支持学习任意长的时间关系。与存在微调问题的连续吸引子不同,较少被探索的准周期性吸引子具有独特的资格来学习产生时间结构化行为。我们的理论对人工学习系统的设计具有广泛的意义,并对可支持时间依赖性学习和工作记忆的生物神经动力学的可观察特征做出预测。基于我们的理论,我们为人工循环神经网络开发了一种新的初始化方案,在需要学习时间动态的任务中优于标准方法。此外,我们提出了一种强大的循环记忆机制,用于在没有环形吸引子的情况下整合和维持头部方向。