Title of article :
Robust solutions to Stackelberg games: Addressing bounded rationality and limited observations in human cognition Original Research Article
Author/Authors :
James Pita، نويسنده , , Manish Jain، نويسنده , , Milind Tambe، نويسنده , , Fernando Ord??ez، نويسنده , , Sarit Kraus، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2010
Abstract :
How do we build algorithms for agent interactions with human adversaries? Stackelberg games are natural models for many important applications that involve human interaction, such as oligopolistic markets and security domains. In Stackelberg games, one player, the leader, commits to a strategy and the follower makes her decision with knowledge of the leaderʹs commitment. Existing algorithms for Stackelberg games efficiently find optimal solutions (leader strategy), but they critically assume that the follower plays optimally. Unfortunately, in many applications, agents face human followers (adversaries) who — because of their bounded rationality and limited observation of the leader strategy — may deviate from their expected optimal response. In other words, human adversariesʹ decisions are biased due to their bounded rationality and limited observations. Not taking into account these likely deviations when dealing with human adversaries may cause an unacceptable degradation in the leaderʹs reward, particularly in security applications where these algorithms have seen deployment. The objective of this paper therefore is to investigate how to build algorithms for agent interactions with human adversaries.
Keywords :
Security , Stackelberg , Uncertainty , Behavioral game theory
Journal title :
Artificial Intelligence
Journal title :
Artificial Intelligence