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Article
Action-Sufficient State Representation Learning for Control with Structural Constraints
Proceedings of Machine Learning Research
  • Biwei Huang, Carnegie Mellon University
  • Chaochao Lu, University of Cambridge
  • Liu Leqi, Carnegie Mellon University
  • José Miguel Hernández-Lobato, University of Cambridge
  • Clark Glymour, Carnegie Mellon University
  • Bernhard Schölkopf, Max Planck Institute for Intelligent Systems
  • Kun Zhang, Carnegie Mellon University & Mohamed bin Zayed University of Artificial Intelligence
Document Type
Conference Proceeding
Abstract

Perceived signals in real-world scenarios are usually high-dimensional and noisy, and finding and using their representation that contains essential and sufficient information required by downstream decision-making tasks will help improve computational efficiency and generalization ability in the tasks. In this paper, we focus on partially observable environments and propose to learn a minimal set of state representations that capture sufficient information for decision-making, termed Action-Sufficient state Representations (ASRs). We build a generative environment model for the structural relationships among variables in the system and present a principled way to characterize ASRs based on structural constraints and the goal of maximizing cumulative reward in policy learning. We then develop a structured sequential Variational Auto-Encoder to estimate the environment model and extract ASRs. Our empirical results on CarRacing and VizDoom demonstrate a clear advantage of learning and using ASRs for policy learning. Moreover, the estimated environment model and ASRs allow learning behaviors from imagined outcomes in the compact latent space to improve sample efficiency.

Publication Date
7-1-2022
Keywords
  • Computational efficiency,
  • Learning systems,
  • Machine learning
Comments

IR conditions: non-described

Open Access version available on PMLR

Citation Information
B. Huang, et al, "Action-Sufficient State Representation Learning for Control with Structural Constraints", in 39th Intl. Conf. on Machine Learning (ICML 2022), PMLR, vol 162, pp. 9260-9279, 2022. Available: https://proceedings.mlr.press/v162/huang22f/huang22f.pdf