Finite sample learning of moving targets

Abstract

We consider a moving target that we seek to learn from samples. Our results extend randomized techniques developed in control and optimization for a constant target to the case where the target is changing. We derive a novel bound on the number of samples that are required to construct a probably approximately correct (PAC) estimate of the target. Furthermore, when the moving target is a convex polytope, we provide a constructive method of generating the PAC estimate using a mixed integer linear program (MILP). The proposed method is demonstrated on an application to autonomous emergency braking.

Publication
In Automatics (in print)
Nikolaus Vertovec
Nikolaus Vertovec
Postdoctoral Researcher

My research interests include safety-critical optimal control with a focus on learning-based approaches.