Ságodi Ábel, Martín-Sánchez Guillermo, Sokół Piotr, Park Il Memming
ArXiv. 2025 Jan 17:arXiv:2408.00109v3.
Continuous attractors offer a unique class of solutions for storing continuous-valued variables in recurrent system states for indefinitely long time intervals. Unfortunately, continuous attractors suffer from severe structural instability in general--they are destroyed by most infinitesimal changes of the dynamical law that defines them. This fragility limits their utility especially in biological systems as their recurrent dynamics are subject to constant perturbations. We observe that the bifurcations from continuous attractors in theoretical neuroscience models display various structurally stable forms. Although their asymptotic behaviors to maintain memory are categorically distinct, their finite-time behaviors are similar. We build on the persistent manifold theory to explain the commonalities between bifurcations from and approximations of continuous attractors. Fast-slow decomposition analysis uncovers the persistent manifold that survives the seemingly destructive bifurcation. Moreover, recurrent neural networks trained on analog memory tasks display approximate continuous attractors with predicted slow manifold structures. Therefore, continuous attractors are functionally robust and remain useful as a universal analogy for understanding analog memory.
连续吸引子为在循环系统状态中无限长时间间隔存储连续值变量提供了一类独特的解决方案。不幸的是,连续吸引子通常存在严重的结构不稳定性——定义它们的动力学定律的大多数微小变化都会破坏它们。这种脆弱性限制了它们的实用性,特别是在生物系统中,因为它们的循环动力学容易受到持续扰动。我们观察到,理论神经科学模型中连续吸引子的分岔呈现出各种结构稳定的形式。尽管它们维持记忆的渐近行为截然不同,但它们的有限时间行为是相似的。我们基于持久流形理论来解释连续吸引子的分岔与近似之间的共性。快慢分解分析揭示了在看似具有破坏性的分岔中幸存的持久流形。此外,在模拟记忆任务上训练的循环神经网络显示出具有预测慢流形结构的近似连续吸引子。因此,连续吸引子在功能上是稳健的,并且作为理解模拟记忆的通用类比仍然有用。