Adaptive Agent Architecture for Real-time Human-Agent Teaming
Tianwei Ni, Huao Li, Siddharth Agrawal, Suhas Raja, Fan Jia, Yikang, Gui, Dana Hughes, Michael Lewis, Katia Sycara

TL;DR
This paper introduces an adaptive agent architecture for real-time human-agent teaming that does not rely on modeling human behavior, instead selecting complementary policies from a library to enhance team performance.
Contribution
It proposes a novel human-model-free adaptive agent framework using a similarity metric to infer human policies and select optimal complementary strategies in real-time.
Findings
The adaptive agent can operate in real-time with minimal assumptions about human behavior.
The approach demonstrates robustness to diverse and suboptimal human policies.
Experimental results show improved team performance in the TSF game.
Abstract
Teamwork is a set of interrelated reasoning, actions and behaviors of team members that facilitate common objectives. Teamwork theory and experiments have resulted in a set of states and processes for team effectiveness in both human-human and agent-agent teams. However, human-agent teaming is less well studied because it is so new and involves asymmetry in policy and intent not present in human teams. To optimize team performance in human-agent teaming, it is critical that agents infer human intent and adapt their polices for smooth coordination. Most literature in human-agent teaming builds agents referencing a learned human model. Though these agents are guaranteed to perform well with the learned model, they lay heavy assumptions on human policy such as optimality and consistency, which is unlikely in many real-world scenarios. In this paper, we propose a novel adaptive agent…
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Taxonomy
TopicsMulti-Agent Systems and Negotiation · Reinforcement Learning in Robotics · Human-Automation Interaction and Safety
