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The Ethereal
Multi-objective Reinforcement Learning With Augmented States Requires Rewards After Deployment
April 17, 2026 ยท Grace Period ยท + Add venue
Authors
Peter Vamplew, Cameron Foale
arXiv ID
2604.15757
Category
cs.LG: Machine Learning
Citations
0
Abstract
This research note identifies a previously overlooked distinction between multi-objective reinforcement learning (MORL), and more conventional single-objective reinforcement learning (RL). It has previously been noted that the optimal policy for an MORL agent with a non-linear utility function is required to be conditioned on both the current environmental state and on some measure of the previously accrued reward. This is generally implemented by concatenating the observed state of the environment with the discounted sum of previous rewards to create an augmented state. While augmented states have been widely-used in the MORL literature, one implication of their use has not previously been reported -- namely that they require the agent to have continued access to the reward signal (or a proxy thereof) after deployment, even if no further learning is required. This note explains why this is the case, and considers the practical repercussions of this requirement.
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