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Data-efficient Hindsight Off-policy Option Learning

Machine Learning 2021-06-16 v2 Artificial Intelligence Robotics Machine Learning

Abstract

We introduce Hindsight Off-policy Options (HO2), a data-efficient option learning algorithm. Given any trajectory, HO2 infers likely option choices and backpropagates through the dynamic programming inference procedure to robustly train all policy components off-policy and end-to-end. The approach outperforms existing option learning methods on common benchmarks. To better understand the option framework and disentangle benefits from both temporal and action abstraction, we evaluate ablations with flat policies and mixture policies with comparable optimization. The results highlight the importance of both types of abstraction as well as off-policy training and trust-region constraints, particularly in challenging, simulated 3D robot manipulation tasks from raw pixel inputs. Finally, we intuitively adapt the inference step to investigate the effect of increased temporal abstraction on training with pre-trained options and from scratch.

Keywords

Cite

@article{arxiv.2007.15588,
  title  = {Data-efficient Hindsight Off-policy Option Learning},
  author = {Markus Wulfmeier and Dushyant Rao and Roland Hafner and Thomas Lampe and Abbas Abdolmaleki and Tim Hertweck and Michael Neunert and Dhruva Tirumala and Noah Siegel and Nicolas Heess and Martin Riedmiller},
  journal= {arXiv preprint arXiv:2007.15588},
  year   = {2021}
}

Comments

Published at ICML2021

R2 v1 2026-06-23T17:32:04.594Z