Transformer Guided Coevolution: Improved Team Formation in Multiagent Adversarial Games
Abstract
BERTeam, a transformer-based deep neural network using Masked Language Model training, forms effective teams in adversarial games by integrating with coevolutionary deep reinforcement learning.
We consider the problem of team formation within multiagent adversarial games. We propose BERTeam, a novel algorithm that uses a transformer-based deep neural network with Masked Language Model training to select the best team of players from a trained population. We integrate this with coevolutionary deep reinforcement learning, which trains a diverse set of individual players to choose teams from. We test our algorithm in the multiagent adversarial game Marine Capture-The-Flag, and we find that BERTeam learns non-trivial team compositions that perform well against unseen opponents. For this game, we find that BERTeam outperforms MCAA, an algorithm that similarly optimizes team formation.
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