Ana Tanevska
Paper download is intended for registered attendees only, and is
subjected to the IEEE Copyright Policy. Any other use is strongly forbidden.
Papers from this author
Learning from Learners: Adapting Reinforcement Learning Agents to Be Competitive in a Card Game
Pablo Vinicius Alves De Barros, Ana Tanevska, Alessandra Sciutti
Auto-TLDR; Adaptive Reinforcement Learning for Competitive Card Games
Abstract Slides Poster Similar
Learning how to adapt to complex and dynamic environments is one of the most important factors that contribute to our intelligence. Endowing artificial agents with this ability is not a simple task, particularly in competitive scenarios. In this paper, we present a broad study on how popular reinforcement learning algorithms can be adapted and implemented to learn and to play a real-world implementation of a competitive multiplayer card game. We propose specific training and validation routines for the learning agents, in order to evaluate how the agents learn to be competitive and explain how they adapt to each others' playing style. Finally, we pinpoint how the behavior of each agent derives from their learning style and create a baseline for future research on this scenario.