Per-Domain Generalizing Policies: On Learning Efficient and Robust Q-Value Functions

Authors

  • Nicola J. Müller German Research Center for Artificial Intelligence (DFKI), Saarbrücken, Germany Saarland University, Saarland Informatics Campus, Saarbrücken, Germany Center for European Research in Trusted Artificial Intelligence (CERTAIN)
  • Moritz Oster German Research Center for Artificial Intelligence (DFKI), Saarbrücken, Germany Saarland University, Saarland Informatics Campus, Saarbrücken, Germany
  • Isabel Valera Saarland University, Saarland Informatics Campus, Saarbrücken, Germany
  • Jörg Hoffmann German Research Center for Artificial Intelligence (DFKI), Saarbrücken, Germany Saarland University, Saarland Informatics Campus, Saarbrücken, Germany
  • Timo P. Gros German Research Center for Artificial Intelligence (DFKI), Saarbrücken, Germany Saarland University, Saarland Informatics Campus, Saarbrücken, Germany Center for European Research in Trusted Artificial Intelligence (CERTAIN)

DOI:

https://doi.org/10.1609/icaps.v36i1.42889

Abstract

Learning per-domain generalizing policies is a key challenge in learning for planning. Standard approaches learn state-value functions represented as graph neural networks using supervised learning on optimal plans generated by a teacher planner. In this work, we advocate for learning Q-value functions instead. Such policies are drastically cheaper to evaluate for a given state, as they need to process only the current state rather than every successor. Surprisingly, vanilla supervised learning of Q-values performs poorly as it does not learn to distinguish between the actions taken and those not taken by the teacher. We address this by using regularization terms that enforce this distinction, resulting in Q-value policies that consistently outperform state-value policies across a range of 10 domains and are competitive with the planner LAMA-first.

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Published

2026-06-08

How to Cite

Müller, N. J., Oster, M., Valera, I., Hoffmann, J., & Gros, T. P. (2026). Per-Domain Generalizing Policies: On Learning Efficient and Robust Q-Value Functions. Proceedings of the International Conference on Automated Planning and Scheduling, 36(1), 703–707. https://doi.org/10.1609/icaps.v36i1.42889