Learning theory for inferring interaction kernels in second-order interacting agent systems
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Published:2023-06
Issue:1
Volume:21
Page:
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ISSN:2730-5716
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Container-title:Sampling Theory, Signal Processing, and Data Analysis
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language:en
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Short-container-title:Sampl. Theory Signal Process. Data Anal.
Author:
Miller Jason, Tang SuiORCID, Zhong Ming, Maggioni Mauro
Abstract
AbstractModeling the complex interactions of systems of particles or agents is a fundamental problem across the sciences, from physics and biology, to economics and social sciences. In this work, we consider second-order, heterogeneous, multivariable models of interacting agents or particles, within simple environments. We describe a nonparametric inference framework to efficiently estimate the latent interaction kernels which drive these dynamical systems. We develop a learning theory which establishes strong consistency and optimal nonparametric min–max rates of convergence for the estimators, as well as provably accurate predicted trajectories. The optimal rates only depends on intrinsic dimension of interactions, which is typically much smaller than the ambient dimension. Our arguments are based on a coercivity condition which ensures that the interaction kernels can be estimated in stable fashion. The numerical algorithm presented to build the estimators is parallelizable, performs well on high-dimensional problems, and its performance is tested on a variety of complex dynamical systems.
Funder
National Science Foundation
Publisher
Springer Science and Business Media LLC
Subject
Computational Mathematics,Radiology, Nuclear Medicine and imaging,Signal Processing,Algebra and Number Theory,Analysis
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