English

MO2: Model-Based Offline Options

Machine Learning 2022-09-07 v1 Artificial Intelligence Robotics Machine Learning

Abstract

The ability to discover useful behaviours from past experience and transfer them to new tasks is considered a core component of natural embodied intelligence. Inspired by neuroscience, discovering behaviours that switch at bottleneck states have been long sought after for inducing plans of minimum description length across tasks. Prior approaches have either only supported online, on-policy, bottleneck state discovery, limiting sample-efficiency, or discrete state-action domains, restricting applicability. To address this, we introduce Model-Based Offline Options (MO2), an offline hindsight framework supporting sample-efficient bottleneck option discovery over continuous state-action spaces. Once bottleneck options are learnt offline over source domains, they are transferred online to improve exploration and value estimation on the transfer domain. Our experiments show that on complex long-horizon continuous control tasks with sparse, delayed rewards, MO2's properties are essential and lead to performance exceeding recent option learning methods. Additional ablations further demonstrate the impact on option predictability and credit assignment.

Keywords

Cite

@article{arxiv.2209.01947,
  title  = {MO2: Model-Based Offline Options},
  author = {Sasha Salter and Markus Wulfmeier and Dhruva Tirumala and Nicolas Heess and Martin Riedmiller and Raia Hadsell and Dushyant Rao},
  journal= {arXiv preprint arXiv:2209.01947},
  year   = {2022}
}

Comments

Accepted at 1st Conference on Lifelong Learning Agents (CoLLAs) Conference Track, 2022

R2 v1 2026-06-28T00:44:24.244Z