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Learning Value Functions from Undirected State-only Experience

Machine Learning 2022-04-27 v1 Artificial Intelligence Robotics

Abstract

This paper tackles the problem of learning value functions from undirected state-only experience (state transitions without action labels i.e. (s,s',r) tuples). We first theoretically characterize the applicability of Q-learning in this setting. We show that tabular Q-learning in discrete Markov decision processes (MDPs) learns the same value function under any arbitrary refinement of the action space. This theoretical result motivates the design of Latent Action Q-learning or LAQ, an offline RL method that can learn effective value functions from state-only experience. Latent Action Q-learning (LAQ) learns value functions using Q-learning on discrete latent actions obtained through a latent-variable future prediction model. We show that LAQ can recover value functions that have high correlation with value functions learned using ground truth actions. Value functions learned using LAQ lead to sample efficient acquisition of goal-directed behavior, can be used with domain-specific low-level controllers, and facilitate transfer across embodiments. Our experiments in 5 environments ranging from 2D grid world to 3D visual navigation in realistic environments demonstrate the benefits of LAQ over simpler alternatives, imitation learning oracles, and competing methods.

Keywords

Cite

@article{arxiv.2204.12458,
  title  = {Learning Value Functions from Undirected State-only Experience},
  author = {Matthew Chang and Arjun Gupta and Saurabh Gupta},
  journal= {arXiv preprint arXiv:2204.12458},
  year   = {2022}
}

Comments

ICLR 2022. Project website at https://matthewchang.github.io/latent_action_qlearning_site

R2 v1 2026-06-24T10:59:20.415Z