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APRIL: Active Preference-learning based Reinforcement Learning

Machine Learning 2012-08-07 v1

Abstract

This paper focuses on reinforcement learning (RL) with limited prior knowledge. In the domain of swarm robotics for instance, the expert can hardly design a reward function or demonstrate the target behavior, forbidding the use of both standard RL and inverse reinforcement learning. Although with a limited expertise, the human expert is still often able to emit preferences and rank the agent demonstrations. Earlier work has presented an iterative preference-based RL framework: expert preferences are exploited to learn an approximate policy return, thus enabling the agent to achieve direct policy search. Iteratively, the agent selects a new candidate policy and demonstrates it; the expert ranks the new demonstration comparatively to the previous best one; the expert's ranking feedback enables the agent to refine the approximate policy return, and the process is iterated. In this paper, preference-based reinforcement learning is combined with active ranking in order to decrease the number of ranking queries to the expert needed to yield a satisfactory policy. Experiments on the mountain car and the cancer treatment testbeds witness that a couple of dozen rankings enable to learn a competent policy.

Keywords

Cite

@article{arxiv.1208.0984,
  title  = {APRIL: Active Preference-learning based Reinforcement Learning},
  author = {Riad Akrour and Marc Schoenauer and Michèle Sebag},
  journal= {arXiv preprint arXiv:1208.0984},
  year   = {2012}
}
R2 v1 2026-06-21T21:46:25.053Z