English

Chain-of-Thought Predictive Control

Machine Learning 2024-07-09 v2 Artificial Intelligence Robotics

Abstract

We study generalizable policy learning from demonstrations for complex low-level control (e.g., contact-rich object manipulations). We propose a novel hierarchical imitation learning method that utilizes sub-optimal demos. Firstly, we propose an observation space-agnostic approach that efficiently discovers the multi-step subskill decomposition of the demos in an unsupervised manner. By grouping temporarily close and functionally similar actions into subskill-level demo segments, the observations at the segment boundaries constitute a chain of planning steps for the task, which we refer to as the chain-of-thought (CoT). Next, we propose a Transformer-based design that effectively learns to predict the CoT as the subskill-level guidance. We couple action and subskill predictions via learnable prompt tokens and a hybrid masking strategy, which enable dynamically updated guidance at test time and improve feature representation of the trajectory for generalizable policy learning. Our method, Chain-of-Thought Predictive Control (CoTPC), consistently surpasses existing strong baselines on challenging manipulation tasks with sub-optimal demos.

Keywords

Cite

@article{arxiv.2304.00776,
  title  = {Chain-of-Thought Predictive Control},
  author = {Zhiwei Jia and Vineet Thumuluri and Fangchen Liu and Linghao Chen and Zhiao Huang and Hao Su},
  journal= {arXiv preprint arXiv:2304.00776},
  year   = {2024}
}

Comments

ICML 2024; project page at https://sites.google.com/view/cotpc

R2 v1 2026-06-28T09:45:58.388Z