Monday, December 9, 2024 - 4:00pm
Event Calendar Category
LIDS Seminar Series
Speaker Name
Babak Hassibi
Affiliation
Caltech
Building and Room Number
32-155
“Linear Bregman Divergence Control”
In the past couple of decades, the use of "non-quadratic" convex cost functions has revolutionized signal processing, machine learning, and statistics, allowing one to customize solutions to have desired structures and properties. However, the situation is not the same in control where the use of quadratic costs still dominates, ostensibly because determining the "value function", i.e., the optimal expected cost-to-go, which is critical to the construction of the optimal controller, becomes computationally intractable as soon as one considers general convex costs. As a result, practitioners often resort to heuristics and approximations, such as model predictive control that only looks a few steps into the future. In the quadratic case, the value function is easily determined by appealing to certainty-equivalence and solving Riccati equations. In this talk, we consider a special class of convex cost functions constructed from Bregman divergence and show how, with appropriate choices, they can be used to fully extend the framework developed for the quadratic case. The resulting optimal controllers are infinite horizon, come with stability guarantees, and have state-feedback, or estimated state-feedback, laws. They exhibit a much wider range of behavior than their quadratic counterparts since the feedback laws are nonlinear. We demonstrate the applicability of the approach to several cases of interest, including safety control, sparse control, and bang-bang control.
Babak Hassibi is the inaugural Mose and Lillian S. Bohn Professor of Electrical Engineering and Computing and Mathematical Sciences at the California Institute of Technology. His research interests span various aspects of information theory, communications, signal processing, control, and machine learning. Among other awards, he is the recipient of the US Presidential Early Career Award for Scientists and Engineers (PECASE) and the David and Lucille Packard Fellowship in Science and Engineering.