4.7 Article

Improving Agent Decision Payoffs via a New Framework of Opponent Modeling

Journal

MATHEMATICS
Volume 11, Issue 14, Pages -

Publisher

MDPI
DOI: 10.3390/math11143062

Keywords

computational intelligence; opponent modeling; deep neural networks; reinforcement learning; interactive decision making

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In intelligent systems, modeling and predicting the strategies and behaviors of other agents is crucial. We propose a framework that incorporates opponent modeling into reinforcement learning to improve the decision payoff of the primary agent. Experimental results show that this approach effectively enhances decision outcomes.
The payoff of an agent depends on both the environment and the actions of other agents. Thus, the ability to model and predict the strategies and behaviors of other agents in an interactive decision-making scenario is one of the core functionalities in intelligent systems. State-of-the-art methods for opponent modeling mainly use an explicit model of opponents' actions, preferences, targets, etc., that the primary agent uses to make decisions. It is more important for an agent to increase its payoff than to accurately predict opponents' behavior. Therefore, we propose a framework synchronizing the opponent modeling and decision making of the primary agent by incorporating opponent modeling into reinforcement learning. For interactive decisions, the payoff depends not only on the behavioral characteristics of the opponent but also the current state. However, confounding the two obscures the effects of state and action, which then cannot be accurately encoded. To this end, state evaluation is separated from action evaluation in our model. The experimental results from two game environments, a simulated soccer game and a real game called quiz bowl, show that the introduction of opponent modeling can effectively improve decision payoffs. In addition, the proposed framework for opponent modeling outperforms benchmark models.

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