中文

Reward Learning with Trees: Methods and Evaluation

机器学习 2022-10-04 v1 人工智能

摘要

Recent efforts to learn reward functions from human feedback have tended to use deep neural networks, whose lack of transparency hampers our ability to explain agent behaviour or verify alignment. We explore the merits of learning intrinsically interpretable tree models instead. We develop a recently proposed method for learning reward trees from preference labels, and show it to be broadly competitive with neural networks on challenging high-dimensional tasks, with good robustness to limited or corrupted data. Having found that reward tree learning can be done effectively in complex settings, we then consider why it should be used, demonstrating that the interpretable reward structure gives significant scope for traceability, verification and explanation.

关键词

引用

@article{arxiv.2210.01007,
  title  = {Reward Learning with Trees: Methods and Evaluation},
  author = {Tom Bewley and Jonathan Lawry and Arthur Richards and Rachel Craddock and Ian Henderson},
  journal= {arXiv preprint arXiv:2210.01007},
  year   = {2022}
}

备注

22 pages (9 main body). Preprint, under review