Publication | Open Access
AATEAM: Achieving the Ad Hoc Teamwork by Employing the Attention Mechanism
24
Citations
25
References
2020
Year
Artificial IntelligenceRemote CollaborationEngineeringMachine LearningProject ManagementEducationReinforcement Learning (Educational Psychology)Intelligent SystemsCommunicationAttentionLifelong Reinforcement LearningMulti-agent LearningAttention NetworkReinforcement Learning (Computer Engineering)ManagementAttention MechanismConversation AnalysisRobot LearningAd Hoc TeamworkVirtual TeamHuman LearningCollective CognitionCognitive ScienceStrategyComputer ScienceOpponent ModellingGroup CommunicationDeep Reinforcement LearningOrganizational CommunicationHuman-computer InteractionWork Group DynamicAttention-based Neural NetworksAd Hoc Agent
In the ad hoc teamwork setting, a team of agents needs to perform a task without prior coordination. The most advanced approach learns policies based on previous experiences and reuses one of the policies to interact with new teammates. However, the selected policy in many cases is sub-optimal. Switching between policies to adapt to new teammates' behaviour takes time, which threatens the successful performance of a task. In this paper, we propose AATEAM – a method that uses the attention-based neural networks to cope with new teammates' behaviour in real-time. We train one attention network per teammate type. The attention networks learn both to extract the temporal correlations from the sequence of states (i.e. contexts) and the mapping from contexts to actions. Each attention network also learns to predict a future state given the current context and its output action. The prediction accuracies help to determine which actions the ad hoc agent should take. We perform extensive experiments to show the effectiveness of our method.
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