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Learning Complementary Policies for Human-AI Teams

Artificial Intelligence 2025-11-04 v2 Human-Computer Interaction

Abstract

This paper tackles the critical challenge of human-AI complementarity in decision-making. Departing from the traditional focus on algorithmic performance in favor of performance of the human-AI team, and moving past the framing of collaboration as classification to focus on decision-making tasks, we introduce a novel approach to policy learning. Specifically, we develop a robust solution for human-AI collaboration when outcomes are only observed under assigned actions. We propose a deferral collaboration approach that maximizes decision rewards by exploiting the distinct strengths of humans and AI, strategically allocating instances among them. Critically, our method is robust to misspecifications in both the human behavior and reward models. Leveraging the insight that performance gains stem from divergent human and AI behavioral patterns, we demonstrate, using synthetic and real human responses, that our proposed method significantly outperforms independent human and algorithmic decision-making. Moreover, we show that substantial performance improvements are achievable by routing only a small fraction of instances to human decision-makers, highlighting the potential for efficient and effective human-AI collaboration in complex management settings.

Keywords

Cite

@article{arxiv.2302.02944,
  title  = {Learning Complementary Policies for Human-AI Teams},
  author = {Ruijiang Gao and Maytal Saar-Tsechansky and Maria De-Arteaga},
  journal= {arXiv preprint arXiv:2302.02944},
  year   = {2025}
}

Comments

Previous name: Robust Human-AI Collaboration with Bandit Feedback; Best student paper award at Conference on Information Systems and Technology (CIST), 2022

R2 v1 2026-06-28T08:33:15.945Z