Theoretical Machine Learning Seminar

Online Control with Adversarial Disturbances

We study the control of a linear dynamical system with adversarial disturbances (as opposed to statistical noise). The objective we consider is one of regret: we desire an online control procedure that can do nearly as well as that of a procedure that has full knowledge of the disturbances in hindsight. Our main result is an efficient algorithm that provides nearly tight regret bounds for this problem. From a technical standpoint, this work generalizes upon previous work in that our model allows for adversarial noise in the dynamics and allows for general convex costs.

Date & Time

February 11, 2019 | 12:15pm – 1:45pm

Location

White Levy Room

Speakers

Naman Agarwal

Affiliation

Online Control with Adversarial Disturbances