Scalable Multiagent Planning Using Probabilistic Inference
Kumar, Akshat (University of Massachusetts Amherst) | Zilberstein, Shlomo (University of Massachusetts Amherst) | Toussaint, Marc (FU Berlin)
Multiagent planning has seen much progress with the development of formal models such as Dec-POMDPs. However, the complexity of these models—NEXP-Complete even for two agents—has limited scalability. We identify certain mild conditions that are sufficient to make multiagent planning amenable to a scalable approximation w.r.t. the number of agents. This is achieved by constructing a graphical model in which likelihood maximization is equivalent to plan optimization. Using the Expectation-Maximization framework for likelihood maximization, we show that the necessary inference can be decomposed into processes that often involve a small subset of agents, thereby facilitating scalability. We derive a global update rule that combines these local inferences to monotonically increase the overall solution quality. Experiments on a large multiagent planning benchmark confirm the benefits of the new approach in terms of runtime and scalability.
Jul-19-2011
- Country:
- North America > United States
- Massachusetts
- Hampshire County > Amherst (0.04)
- Plymouth County > Norwell (0.04)
- Middlesex County > Cambridge (0.04)
- Massachusetts
- Asia > Middle East
- Jordan (0.05)
- North America > United States