Moody Learners -- Explaining Competitive Behaviour of Reinforcement Learning Agents
Barros, Pablo, Tanevska, Ana, Cruz, Francisco, Sciutti, Alessandra
–arXiv.org Artificial Intelligence
Designing the decision-making processes of artificial agents that are involved in competitive interactions is a challenging task. In a competitive scenario, the agent does not only have a dynamic environment but also is directly affected by the opponents' actions. Observing the Q-values of the agent is usually a way of explaining its behavior, however, do not show the temporal-relation between the selected actions. We address this problem by proposing the \emph{Moody framework}. We evaluate our model by performing a series of experiments using the competitive multiplayer Chef's Hat card game and discuss how our model allows the agents' to obtain a holistic representation of the competitive dynamics within the game.
arXiv.org Artificial Intelligence
Jul-30-2020
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