The dynamics of systems of many degrees of freedom evolving on multiple scales are often modeled in terms of stochastic differential equations. Usually the structural form of these equations is unknown and the only manifestation of the system's dynamics are observations at discrete points in time. Despite their widespread use, accurately inferring these systems from sparse-in-time observations remains challenging. Conventional inference methods either focus on the temporal structure of observations, neglecting the geometry of the system's invariant density, or use geometric approximations of the invariant density, which are limited to conservative driving forces. To address these limitations, here, we introduce a novel approach that reconciles these two perspectives. We propose a path augmentation scheme that employs data-driven control to account for the geometry of the invariant system's density. Non-parametric inference on the augmented paths, enables efficient identification of the underlying deterministic forces of systems observed at low sampling rates.
翻译:许多自由度具有多个尺度演化系统的动态通常以随机微分方程模型为基础进行建模。通常这些方程的结构形式是未知的,系统动态的唯一表现形式就是离散时间点上的观测量。尽管这些模型被广泛使用,但精确地从稀疏观测中推导这些系统仍然具有挑战性。传统的推理方法要么关注于观测的时间结构,忽略了系统不变密度的几何形态,要么使用不变密度的几何逼近,这些逼近仅限于保守的驱动力。为了解决这些局限性,我们在这里提出了一种新方法,将这两个视角协调起来。我们提出了一种路径增强方案,利用数据驱动控制来考虑不变系统密度的几何形状。对增强路径的非参数推理使得我们能够有效地识别低采样率下观测到的系统的基本确定性力量。