LLM Memory & RAG 相关度: 7/10

Drift-Diffusion Matching: Embedding dynamics in latent manifolds of asymmetric neural networks

Ramón Nartallo-Kaluarachchi, Renaud Lambiotte, Alain Goriely
arXiv: 2602.14885v1 发布: 2026-02-16 更新: 2026-02-16

AI 摘要

提出漂移-扩散匹配框架,使非对称RNN能在低维潜在空间中表示任意随机动力系统。

主要贡献

  • 提出了漂移-扩散匹配框架
  • 展示了非对称RNN嵌入随机微分方程的能力
  • 构建了RNN实现,模拟联想和序列记忆

方法论

训练连续时间RNN,使其在低维潜在空间中嵌入随机动力系统的漂移和扩散。

原文摘要

Recurrent neural networks (RNNs) provide a theoretical framework for understanding computation in biological neural circuits, yet classical results, such as Hopfield's model of associative memory, rely on symmetric connectivity that restricts network dynamics to gradient-like flows. In contrast, biological networks support rich time-dependent behaviour facilitated by their asymmetry. Here we introduce a general framework, which we term drift-diffusion matching, for training continuous-time RNNs to represent arbitrary stochastic dynamical systems within a low-dimensional latent subspace. Allowing asymmetric connectivity, we show that RNNs can faithfully embed the drift and diffusion of a given stochastic differential equation, including nonlinear and nonequilibrium dynamics such as chaotic attractors. As an application, we construct RNN realisations of stochastic systems that transiently explore various attractors through both input-driven switching and autonomous transitions driven by nonequilibrium currents, which we interpret as models of associative and sequential (episodic) memory. To elucidate how these dynamics are encoded in the network, we introduce decompositions of the RNN based on its asymmetric connectivity and its time-irreversibility. Our results extend attractor neural network theory beyond equilibrium, showing that asymmetric neural populations can implement a broad class of dynamical computations within low-dimensional manifolds, unifying ideas from associative memory, nonequilibrium statistical mechanics, and neural computation.

标签

RNN 动态系统 非对称神经网络 记忆

arXiv 分类

cond-mat.dis-nn cond-mat.stat-mech cs.LG q-bio.NC