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📄 Abstract
Abstract: We develop a Gaussian process framework for learning interaction kernels in
multi-species interacting particle systems from trajectory data. Such systems
provide a canonical setting for multiscale modeling, where simple microscopic
interaction rules generate complex macroscopic behaviors. While our earlier
work established a Gaussian process approach and convergence theory for
single-species systems, and later extended to second-order models with
alignment and energy-type interactions, the multi-species setting introduces
new challenges: heterogeneous populations interact both within and across
species, the number of unknown kernels grows, and asymmetric interactions such
as predator-prey dynamics must be accommodated. We formulate the learning
problem in a nonparametric Bayesian setting and establish rigorous statistical
guarantees. Our analysis shows recoverability of the interaction kernels,
provides quantitative error bounds, and proves statistical optimality of
posterior estimators, thereby unifying and generalizing previous single-species
theory. Numerical experiments confirm the theoretical predictions and
demonstrate the effectiveness of the proposed approach, highlighting its
advantages over existing kernel-based methods. This work contributes a complete
statistical framework for data-driven inference of interaction laws in
multi-species systems, advancing the broader multiscale modeling program of
connecting microscopic particle dynamics with emergent macroscopic behavior.
Key Contributions
This work develops a Gaussian process framework for learning interaction kernels in multi-species interacting particle systems from trajectory data. It establishes rigorous statistical guarantees, including recoverability of kernels and quantitative error bounds, extending previous work to handle heterogeneous populations and asymmetric interactions like predator-prey dynamics.
Business Value
Enables more accurate modeling and prediction of complex systems in fields like biology, chemistry, and physics, leading to better understanding and design of materials, ecosystems, and biological processes.