Author:
Lu Fei,Maggioni Mauro,Tang Sui
Abstract
AbstractWe consider stochastic systems of interacting particles or agents, with dynamics determined by an interaction kernel, which only depends on pairwise distances. We study the problem of inferring this interaction kernel from observations of the positions of the particles, in either continuous or discrete time, along multiple independent trajectories. We introduce a nonparametric inference approach to this inverse problem, based on a regularized maximum likelihood estimator constrained to suitable hypothesis spaces adaptive to data. We show that a coercivity condition enables us to control the condition number of this problem and prove the consistency of our estimator, and that in fact it converges at a near-optimal learning rate, equal to the min–max rate of one-dimensional nonparametric regression. In particular, this rate is independent of the dimension of the state space, which is typically very high. We also analyze the discretization errors in the case of discrete-time observations, showing that it is of order 1/2 in terms of the time spacings between observations. This term, when large, dominates the sampling error and the approximation error, preventing convergence of the estimator. Finally, we exhibit an efficient parallel algorithm to construct the estimator from data, and we demonstrate the effectiveness of our algorithm with numerical tests on prototype systems including stochastic opinion dynamics and a Lennard-Jones model.
Publisher
Springer Science and Business Media LLC
Subject
Applied Mathematics,Computational Theory and Mathematics,Computational Mathematics,Analysis
Reference55 articles.
1. A. S. Baumgarten and K. Kamrin. A general constitutive model for dense, fine-particle suspensions validated in many geometries. Proc Natl Acad Sci USA, 116(42):20828–20836, 2019.
2. N. Bell, Y. Yu, and P. J. Mucha. Particle-based simulation of granular materials. In Proceedings of the 2005 ACM SIGGRAPH/Eurographics Symposium on Computer Animation - SCA ’05, page 77, Los Angeles, California, 2005. ACM Press.
3. S. Benachour, B. Roynette, D. Talay, and P. Vallois. Nonlinear self-stabilizing processes – I Existence, invariant probability, propagation of chaos. Stochastic Processes and their Applications, 75(2):173–201, 1998.
4. G. Bennett. Probability inequalities for the sum of independent random variables. Journal of the American Statistical Association, 57(297):33–45, 1962.
5. S. Bernstein. Sur l’ordre de la meilleure approximation des fonctions continues par des polynômes de degré donné, volume 4. Hayez, imprimeur des académies royales, 1912.
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