English

Explaining by Imitating: Understanding Decisions by Interpretable Policy Learning

Machine Learning 2023-11-01 v1 Machine Learning

Abstract

Understanding human behavior from observed data is critical for transparency and accountability in decision-making. Consider real-world settings such as healthcare, in which modeling a decision-maker's policy is challenging -- with no access to underlying states, no knowledge of environment dynamics, and no allowance for live experimentation. We desire learning a data-driven representation of decision-making behavior that (1) inheres transparency by design, (2) accommodates partial observability, and (3) operates completely offline. To satisfy these key criteria, we propose a novel model-based Bayesian method for interpretable policy learning ("Interpole") that jointly estimates an agent's (possibly biased) belief-update process together with their (possibly suboptimal) belief-action mapping. Through experiments on both simulated and real-world data for the problem of Alzheimer's disease diagnosis, we illustrate the potential of our approach as an investigative device for auditing, quantifying, and understanding human decision-making behavior.

Keywords

Cite

@article{arxiv.2310.19831,
  title  = {Explaining by Imitating: Understanding Decisions by Interpretable Policy Learning},
  author = {Alihan Hüyük and Daniel Jarrett and Mihaela van der Schaar},
  journal= {arXiv preprint arXiv:2310.19831},
  year   = {2023}
}
R2 v1 2026-06-28T13:06:25.767Z