University of Texas at Austin

Past Event: Babuška Forum

Dynamic Game Models for Multi-Agent Interactions: Forward and Inverse Solutions

David Fridovich-Keil, Assistant Professor, Department of Aerospace Engineering and Engineering Mechanics, The University of Texas at Austin

9 – 10AM
Friday Apr 7, 2023

POB 6.304 & Zoom

Abstract

This talk introduces dynamic game theory as a natural modeling tool for multi-agent interactions ranging from large, abstract systems such as ride-hailing networks to more concrete, physically-embodied robotic settings such as collision-avoidance in traffic. We present the key theoretical underpinnings of dynamic game models for these varied situations and draw attention to the subtleties of information structure, i.e., what information is implicitly made available to each agent in a game. Thus equipped, the talk presents a state-of-the-art technique for solving these games, as well as a “dual” technique for the inverse problem of identifying players’ objectives based on observations of strategic behavior.

Biography

David Fridovich-Keil is an assistant professor at the University of Texas at Austin. David’s research spans optimal control, dynamic game theory, learning for control, and robot safety. While he has also worked on problems in distributed control, reinforcement learning, and active search, he is currently investigating the role of dynamic game theory in multi-agent interactive settings such as traffic. Fridovich-Keil’s work also focuses on the interplay between machine learning and classical ideas from robust, adaptive, and geometric control theory. David completed his PhD under the supervision of Claire Tomlin at UC Berkeley and did a postdoc at Stanford University with Mac Schwager.

Dynamic Game Models for Multi-Agent Interactions: Forward and Inverse Solutions

Event information

Date
9 – 10AM
Friday Apr 7, 2023
Location POB 6.304 & Zoom
Hosted by Dingcheng Luo