English

GABRIL: Gaze-Based Regularization for Mitigating Causal Confusion in Imitation Learning

Robotics 2025-07-31 v1 Artificial Intelligence Machine Learning

Abstract

Imitation Learning (IL) is a widely adopted approach which enables agents to learn from human expert demonstrations by framing the task as a supervised learning problem. However, IL often suffers from causal confusion, where agents misinterpret spurious correlations as causal relationships, leading to poor performance in testing environments with distribution shift. To address this issue, we introduce GAze-Based Regularization in Imitation Learning (GABRIL), a novel method that leverages the human gaze data gathered during the data collection phase to guide the representation learning in IL. GABRIL utilizes a regularization loss which encourages the model to focus on causally relevant features identified through expert gaze and consequently mitigates the effects of confounding variables. We validate our approach in Atari environments and the Bench2Drive benchmark in CARLA by collecting human gaze datasets and applying our method in both domains. Experimental results show that the improvement of GABRIL over behavior cloning is around 179% more than the same number for other baselines in the Atari and 76% in the CARLA setup. Finally, we show that our method provides extra explainability when compared to regular IL agents.

Keywords

Cite

@article{arxiv.2507.19647,
  title  = {GABRIL: Gaze-Based Regularization for Mitigating Causal Confusion in Imitation Learning},
  author = {Amin Banayeeanzade and Fatemeh Bahrani and Yutai Zhou and Erdem Bıyık},
  journal= {arXiv preprint arXiv:2507.19647},
  year   = {2025}
}

Comments

IROS 2025 camera-ready version. First two authors contributed equally

R2 v1 2026-07-01T04:19:36.360Z