NAAIDSMar 13, 2024

Weak Collocation Regression for Inferring Stochastic Dynamics with Lévy Noise

arXiv:2403.08292v11 citationsh-index: 7Commun Comput Phys
Originality Incremental advance
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This work addresses the challenge of extracting stochastic dynamics with non-Gaussian noise for researchers in physics and data-driven modeling, though it appears incremental as it builds on existing weak form and regression techniques.

The authors tackled the problem of inferring stochastic differential equations with both Lévy and Gaussian noise from discrete aggregate data, proposing a Weak Collocation Regression method that accurately and efficiently identifies unknown parameters, as demonstrated in numerical experiments.

With the rapid increase of observational, experimental and simulated data for stochastic systems, tremendous efforts have been devoted to identifying governing laws underlying the evolution of these systems. Despite the broad applications of non-Gaussian fluctuations in numerous physical phenomena, the data-driven approaches to extracting stochastic dynamics with Lévy noise are relatively few. In this work, we propose a Weak Collocation Regression (WCR) to explicitly reveal unknown stochastic dynamical systems, i.e., the Stochastic Differential Equation (SDE) with both $α$-stable Lévy noise and Gaussian noise, from discrete aggregate data. This method utilizes the evolution equation of the probability distribution function, i.e., the Fokker-Planck (FP) equation. With the weak form of the FP equation, the WCR constructs a linear system of unknown parameters where all integrals are evaluated by Monte Carlo method with the observations. Then, the unknown parameters are obtained by a sparse linear regression. For a SDE with Lévy noise, the corresponding FP equation is a partial integro-differential equation (PIDE), which contains nonlocal terms, and is difficult to deal with. The weak form can avoid complicated multiple integrals. Our approach can simultaneously distinguish mixed noise types, even in multi-dimensional problems. Numerical experiments demonstrate that our method is accurate and computationally efficient.

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