English

DeCoDe: Defer-and-Complement Decision-Making via Decoupled Concept Bottleneck Models

Artificial Intelligence 2025-05-27 v1 Computers and Society

Abstract

In human-AI collaboration, a central challenge is deciding whether the AI should handle a task, be deferred to a human expert, or be addressed through collaborative effort. Existing Learning to Defer approaches typically make binary choices between AI and humans, neglecting their complementary strengths. They also lack interpretability, a critical property in high-stakes scenarios where users must understand and, if necessary, correct the model's reasoning. To overcome these limitations, we propose Defer-and-Complement Decision-Making via Decoupled Concept Bottleneck Models (DeCoDe), a concept-driven framework for human-AI collaboration. DeCoDe makes strategy decisions based on human-interpretable concept representations, enhancing transparency throughout the decision process. It supports three flexible modes: autonomous AI prediction, deferral to humans, and human-AI collaborative complementarity, selected via a gating network that takes concept-level inputs and is trained using a novel surrogate loss that balances accuracy and human effort. This approach enables instance-specific, interpretable, and adaptive human-AI collaboration. Experiments on real-world datasets demonstrate that DeCoDe significantly outperforms AI-only, human-only, and traditional deferral baselines, while maintaining strong robustness and interpretability even under noisy expert annotations.

Keywords

Cite

@article{arxiv.2505.19220,
  title  = {DeCoDe: Defer-and-Complement Decision-Making via Decoupled Concept Bottleneck Models},
  author = {Chengbo He and Bochao Zou and Junliang Xing and Jiansheng Chen and Yuanchun Shi and Huimin Ma},
  journal= {arXiv preprint arXiv:2505.19220},
  year   = {2025}
}
R2 v1 2026-07-01T02:37:31.771Z