MLLGSTOct 10, 2019

Learning interaction kernels in heterogeneous systems of agents from multiple trajectories

arXiv:1910.04832v369 citations
Originality Incremental advance
AI Analysis

This work addresses the fundamental task of estimating interaction laws from data for systems in physics, biology, and economics, but it is incremental as it builds on nonparametric regression methods.

The paper tackles the inverse problem of learning unknown interaction laws from multiple trajectories in heterogeneous agent systems, establishing a learnability condition and constructing estimators that converge at optimal min-max rates, with numerical simulations showing robustness to noise and accurate predictions.

Systems of interacting particles or agents have wide applications in many disciplines such as Physics, Chemistry, Biology and Economics. These systems are governed by interaction laws, which are often unknown: estimating them from observation data is a fundamental task that can provide meaningful insights and accurate predictions of the behaviour of the agents. In this paper, we consider the inverse problem of learning interaction laws given data from multiple trajectories, in a nonparametric fashion, when the interaction kernels depend on pairwise distances. We establish a condition for learnability of interaction kernels, and construct estimators that are guaranteed to converge in a suitable $L^2$ space, at the optimal min-max rate for 1-dimensional nonparametric regression. We propose an efficient learning algorithm based on least squares, which can be implemented in parallel for multiple trajectories and is therefore well-suited for the high dimensional, big data regime. Numerical simulations on a variety examples, including opinion dynamics, predator-swarm dynamics and heterogeneous particle dynamics, suggest that the learnability condition is satisfied in models used in practice, and the rate of convergence of our estimator is consistent with the theory. These simulations also suggest that our estimators are robust to noise in the observations, and produce accurate predictions of dynamics in relative large time intervals, even when they are learned from data collected in short time intervals.

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