English

Eliciting User Preferences for Personalized Multi-Objective Decision Making through Comparative Feedback

Machine Learning 2023-11-02 v2

Abstract

In classic reinforcement learning (RL) and decision making problems, policies are evaluated with respect to a scalar reward function, and all optimal policies are the same with regards to their expected return. However, many real-world problems involve balancing multiple, sometimes conflicting, objectives whose relative priority will vary according to the preferences of each user. Consequently, a policy that is optimal for one user might be sub-optimal for another. In this work, we propose a multi-objective decision making framework that accommodates different user preferences over objectives, where preferences are learned via policy comparisons. Our model consists of a Markov decision process with a vector-valued reward function, with each user having an unknown preference vector that expresses the relative importance of each objective. The goal is to efficiently compute a near-optimal policy for a given user. We consider two user feedback models. We first address the case where a user is provided with two policies and returns their preferred policy as feedback. We then move to a different user feedback model, where a user is instead provided with two small weighted sets of representative trajectories and selects the preferred one. In both cases, we suggest an algorithm that finds a nearly optimal policy for the user using a small number of comparison queries.

Keywords

Cite

@article{arxiv.2302.03805,
  title  = {Eliciting User Preferences for Personalized Multi-Objective Decision Making through Comparative Feedback},
  author = {Han Shao and Lee Cohen and Avrim Blum and Yishay Mansour and Aadirupa Saha and Matthew R. Walter},
  journal= {arXiv preprint arXiv:2302.03805},
  year   = {2023}
}
R2 v1 2026-06-28T08:34:40.428Z