Learning Interaction Variables and Kernels from Observations of Agent-Based Systems
Published in MTNS, 2022
Recommended citation: Feng, J. and Maggioni, M. and Martin, P. and Zhong, M. (2022). "Learning Interaction Variables and Kernels from Observations of Agent-Based Systems." IFAC-PapersOnLine, 25th International Symposium on Mathematical Theory of Networks and Systems (MTNS 2022), 55 (30), 162 - 167, 2022. https://www.sciencedirect.com/science/article/pii/S2405896322026799
Abstract: Dynamical systems across many disciplines are modeled as interacting particles or agents, with interaction rules that depend on a very small number of variables (e.g. pairwise distances, pairwise differences of phases, etc…), functions of the state of pairs of agents. Yet, these interaction rules can generate self-organized dynamics, with complex emergent behaviors (clustering, flocking, swarming, etc.). We propose a learning technique that, given observations of states and velocities along trajectories of the agents, yields both the variables upon which the interaction kernel depends and the interaction kernel itself, in a nonparametric fashion. This yields an effective dimension reduction which avoids the curse of dimensionality from the high-dimensional observation data (states and velocities of all the agents). We demonstrate the learning capability of our method to a variety of first-order interacting systems.