Reinforcement Learning, Collusion, and the Folk Theorem

Speaker
Galit Ashkenazi-Golan
Date
14/01/2025 - 12:30 - 11:15Add To Calendar 2025-01-14 11:15:00 2025-01-14 12:30:00 Reinforcement Learning, Collusion, and the Folk Theorem We explore the strategic behaviour emerging from learning agents repeatedly interacting for a wide range of learning dynamics that includes projected gradient, replicator and log-barrier dynamics. Going beyond the better-understood classes of potential games and zero-sum games, we consider the setting of a general repeated game with finite recall, for different forms of monitoring. We obtain a Folk Theorem-like result and characterise the set of payoff vectors that can be obtained by these dynamics, discovering a wide range of possibilities for the emergence of algorithmic collusion. (joint with Edward Plumb and Domenico Mergoni)   Galit Ashkenazi-Golan's homepage: https://galitashkenazi.wixsite.com/website-8 BIU Economics common room אוניברסיטת בר-אילן - Department of Economics Economics.Dept@mail.biu.ac.il Asia/Jerusalem public
Place
BIU Economics common room
Affiliation
LSE
Abstract

We explore the strategic behaviour emerging from learning agents repeatedly interacting for a wide range of learning dynamics that includes projected gradient, replicator and log-barrier dynamics. Going beyond the better-understood classes of potential games and zero-sum games, we consider the setting of a general repeated game with finite recall, for different forms of monitoring. We obtain a Folk Theorem-like result and characterise the set of payoff vectors that can be obtained by these dynamics, discovering a wide range of possibilities for the emergence of algorithmic collusion.

(joint with Edward Plumb and Domenico Mergoni)
 
Galit Ashkenazi-Golan's homepage: https://galitashkenazi.wixsite.com/website-8

Last Updated Date : 09/01/2025