APReL: A Library for Active Preference-based Reward Learning Algorithms

Bıyık, Erdem, Talati, Aditi, Sadigh, Dorsa

arXiv.org Artificial Intelligence 

Reward learning is a fundamental problem in robotics to have robots that operate in alignment with what their human user wants. Many preference-based learning algorithms and active querying techniques have been proposed as a solution to this problem. In this paper, we present APReL, a library for active preference-based reward learning algorithms, which enable researchers and practitioners to experiment with the existing techniques and easily develop their own algorithms for various modules of the problem.