In this talk I focus on the contributions of the WoLF principle and the GraWoLF algorithm. I show that the WoLF variable learning rate causes learning to converge to optimal responses in settings of simultaneous learning. I demonstrate this converging effect both theoretically in a subclass of single-state games and empirically in a variety of multiple-state domains. I then describe GraWoLF, a combination of policy gradient techniques and the WoLF principle. I show compelling results of applying this algorithm to a card game with an intractably large state space as well as an adversarial robot task. These results demonstrate that WoLF-based algorithms can effectively learn in the presence of other learning agents, and do so even in complex tasks with limited agents.
03-31
Multiagent Learning in the Presence of Limited Agents
Learning to act in a multiagent environment is a challenging problem.
Optimal behavior for one agent depends upon the behavior of the other
agents, which may be learning as well. Multiagent environments are
therefore non-stationary, violating the traditional assumption
underlying single-agent learning. In addition, agents in complex
tasks may have limitations, such as unintended physical constraints or
designer-imposed approximations of the task that make learning
tractable. Limitations prevent agents from acting optimally, which
complicates the already challenging problem. A learning agent must
effectively compensate for its own limitations while exploiting the
limitations of the other agents. My thesis research focuses on these
two challenges. The novel contributions of my thesis include (1) the
WoLF (Win or Learn Fast) variable learning rate as a new principle
that enables convergence to optimal responses in multiagent learning;
(2) an analysis of the existence of Nash equilibria when agents have
limitations; and (3) GraWoLF as a scalable multiagent learning
algorithm.
Date and Time
Monday March 31, 2003 4:00pm -
5:30pm
Location
Computer Science Small Auditorium (Room 105)
Event Type
Speaker
Michael Bowling, from Carnegie Mellon University
Host
Robert Schapire
Website
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