Publication | Open Access
Scaling Up Multiagent Planning: A Best-Response Approach
48
Citations
14
References
2011
Year
Artificial IntelligenceMathematical ProgrammingEngineeringAgent Decision-makingGame TheoryMultiagent PlanningAutonomous Agent SystemMulti-agent LearningOperations ResearchLogisticsSystems EngineeringCombinatorial OptimizationDecision TheoryMechanism DesignMulti-agent PlanningExponential BlowupDesignMulti-agent Mechanism DesignAi PlanningMulti-agent SystemsBusinessPlanningNash Equilibrium
Multiagent planning is computationally hard in the general case due to the exponential blowup in the action space induced by concurrent action of different agents. At the same time, many scenarios require the computation of plans that are strategically meaningful for self-interested agents, in order to ensure that there would be sufficient incentives for those agents to participate in a joint plan. In this paper, we present a multiagent planning and plan improvement method that is based on conducting iterative best-response planning using standard single-agent planning algorithms. In constrained types of planning scenarios that correspond to congestion games, this is guaranteed to converge to a plan that is a Nash equilibrium with regard to agents' preference profiles over the entire plan space. Our empirical evaluation beyond these restricted scenarios shows, however, that the algorithm has much broader applicability as a method for plan improvement in general multiagent planning problems. Extensive empirical experiments in various domains illustrate the scalability of our method in both cases.
| Year | Citations | |
|---|---|---|
Page 1
Page 1