论文标题
从潜在轨迹的随机观察中学习非平稳的兰格文动力学
Learning non-stationary Langevin dynamics from stochastic observations of latent trajectories
论文作者
论文摘要
许多远离平衡的复杂系统表现出可以用langevin方程来描述的随机动力学。从数据中推断langevin方程可以揭示此类系统的瞬态动力学如何产生其功能。但是,动态通常是无法直接访问的,只能通过随机观察过程收集,这使推理具有挑战性。在这里,我们提出了一个非参数框架,用于推断langevin方程,该方程明确地模拟了随机观察过程和非平稳的潜在动力学。该框架解释了观察到的系统的非平衡初始和最终状态,以及系统的动力学定义了观察持续时间。省略这些非平稳组件中的任何一个会导致不正确的推断,其中由于非平稳数据分布而导致的动力学出现了错误的特征。我们使用大脑中基础决策的神经动力学模型来说明框架。
Many complex systems operating far from the equilibrium exhibit stochastic dynamics that can be described by a Langevin equation. Inferring Langevin equations from data can reveal how transient dynamics of such systems give rise to their function. However, dynamics are often inaccessible directly and can be only gleaned through a stochastic observation process, which makes the inference challenging. Here we present a non-parametric framework for inferring the Langevin equation, which explicitly models the stochastic observation process and non-stationary latent dynamics. The framework accounts for the non-equilibrium initial and final states of the observed system and for the possibility that the system's dynamics define the duration of observations. Omitting any of these non-stationary components results in incorrect inference, in which erroneous features arise in the dynamics due to non-stationary data distribution. We illustrate the framework using models of neural dynamics underlying decision making in the brain.