English

Interactionless Inverse Reinforcement Learning: A Data-Centric Framework for Durable Alignment

Machine Learning 2026-03-26 v2

Abstract

AI alignment is growing in importance, yet many current approaches learn safety behavior by directly modifying policy parameters, entangling normative constraints with the underlying policy. This often yields opaque, difficult-to-edit alignment artifacts and reduces their reuse across models or deployments, a failure mode we term Alignment Waste. We propose Interactionless Inverse Reinforcement Learning, a framework for learning inspectable, editable, and reusable reward artifacts separately from policy optimization. We further introduce the Alignment Flywheel, a human-in-the-loop lifecycle for iteratively auditing, patching, and hardening these artifacts through automated evaluation and refinement. Together, these ideas recast alignment from a disposable training expense into a durable, verifiable engineering asset.

Keywords

Cite

@article{arxiv.2602.14844,
  title  = {Interactionless Inverse Reinforcement Learning: A Data-Centric Framework for Durable Alignment},
  author = {Elias Malomgré and Pieter Simoens},
  journal= {arXiv preprint arXiv:2602.14844},
  year   = {2026}
}

Comments

Accepted for the AAMAS 2026 Blue Sky Ideas track

R2 v1 2026-07-01T10:38:40.467Z