Sample-Efficient Learning of POMDPs with Multiple Observations In Hindsight
Abstract
This paper studies the sample-efficiency of learning in Partially Observable Markov Decision Processes (POMDPs), a challenging problem in reinforcement learning that is known to be exponentially hard in the worst-case. Motivated by real-world settings such as loading in game playing, we propose an enhanced feedback model called ``multiple observations in hindsight'', where after each episode of interaction with the POMDP, the learner may collect multiple additional observations emitted from the encountered latent states, but may not observe the latent states themselves. We show that sample-efficient learning under this feedback model is possible for two new subclasses of POMDPs: \emph{multi-observation revealing POMDPs} and \emph{distinguishable POMDPs}. Both subclasses generalize and substantially relax \emph{revealing POMDPs} -- a widely studied subclass for which sample-efficient learning is possible under standard trajectory feedback. Notably, distinguishable POMDPs only require the emission distributions from different latent states to be \emph{different} instead of \emph{linearly independent} as required in revealing POMDPs.
Cite
@article{arxiv.2307.02884,
title = {Sample-Efficient Learning of POMDPs with Multiple Observations In Hindsight},
author = {Jiacheng Guo and Minshuo Chen and Huan Wang and Caiming Xiong and Mengdi Wang and Yu Bai},
journal= {arXiv preprint arXiv:2307.02884},
year = {2023}
}