Learning bidding strategies with autonomous agents in environments with unstable equilibrium

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The role of automated agents for decision support in the electronic marketplace has been growing steadily and has been attracting a lot of research from the artificial intelligence community as well as from economists. In this paper, we study the efficacy of using automated agents for learning bidding strategies in contexts of strategic interaction involving multiple sellers in reverse auctions. Standard game-theoretic analysis of the problem assumes completely rational and omniscient agents to derive Nash equilibrium seller policy. Most of the literature on use of learning agents uses convergence to Nash equilibrium as the validating criterion. In this paper, we consider a problem where the Nash equilibrium is unstable and hence not useful as an evaluation criterion. Instead, we propose that agents should be able to learn the optimal or best response strategies when they exist (rational behavior) and should demonstrate low variance in profits (convergence). We present rationally bounded, evolutionary and reinforcement learning agents that learn these desirable properties of rational behavior and convergence.

论文关键词:Strategic interactions,Automated agents,Reinforcement learning,Evolutionary learning,Bidding strategies,Unstable equilibrium

论文评审过程:Received 19 July 2006, Revised 6 May 2008, Accepted 26 May 2008, Available online 30 May 2008.

论文官网地址:https://doi.org/10.1016/j.dss.2008.05.005