BEGIN:VCALENDAR VERSION:2.0 PRODID:-//132.216.98.100//NONSGML kigkonsult.se iCalcreator 2.20.4// BEGIN:VEVENT UID:20250726T220346EDT-9972RwIGPK@132.216.98.100 DTSTAMP:20250727T020346Z DESCRIPTION:Virtual Informal Systems Seminar (VISS) Centre for Intelligent Machines (CIM) and Groupe d'Etudes et de Recherche en Analyse des Decision s (GERAD)\n\n\n Zoom Link\n Meeting ID: 910 7928 6959        \n Passcode: VIS S\n \n Speaker:  Kai Cui\, PhD candidate\, Technical University of Darmstadt \n \n Abstract: The recent mean field game (MFG) formalism facilitates other wise intractable computation of approximate Nash equilibria in many-agent settings. In this paper\, we consider discrete-time finite MFGs subject to finite-horizon objectives. We show that all discrete-time finite MFGs wit h non-constant fixed point operators fail to be contractive as typically a ssumed in existing MFG literature\, barring convergence via fixed point it eration. Instead\, we incorporate entropy-regularization and Boltzmann pol icies into the fixed point iteration. As a result\, we obtain provable con vergence to approximate fixed points where existing methods fail\, and rea ch the original goal of approximate Nash equilibria. All proposed methods are evaluated with respect to their exploitability\, on both instructive e xamples with tractable exact solutions and high-dimensional problems where exact methods become intractable. In high-dimensional scenarios\, we appl y established deep reinforcement learning methods and empirically combine fictitious play with our approximations.\n \n Bio: Kai Cui is a PhD candidat e at the Bioinspired Communication Systems Lab under supervision of Profes sor Heinz Koeppl at Technical University of Darmstadt (Germany). Prior to joining BCS\, he also received BSc and MSc degrees in Computer Science as well as Electrical Engineering and Information Technology at Technical Uni versity of Darmstadt. His current research interests are multi-agent syste ms\, reinforcement learning\, mean field games and UAV swarms.\n\n DTSTART:20210326T140000Z DTEND:20210326T150000Z LOCATION:CA\, ZOOM SUMMARY:Approximately Solving Mean Field Games via Entropy-Regularized Deep Reinforcement Learning URL:/cim/channels/event/approximately-solving-mean-fie ld-games-entropy-regularized-deep-reinforcement-learning-329072 END:VEVENT END:VCALENDAR