English

Learning the Value Systems of Societies with Preference-based Multi-objective Reinforcement Learning

Artificial Intelligence 2026-02-12 v2 Computers and Society Machine Learning

Abstract

Value-aware AI should recognise human values and adapt to the value systems (value-based preferences) of different users. This requires operationalization of values, which can be prone to misspecification. The social nature of values demands their representation to adhere to multiple users while value systems are diverse, yet exhibit patterns among groups. In sequential decision making, efforts have been made towards personalization for different goals or values from demonstrations of diverse agents. However, these approaches demand manually designed features or lack value-based interpretability and/or adaptability to diverse user preferences. We propose algorithms for learning models of value alignment and value systems for a society of agents in Markov Decision Processes (MDPs), based on clustering and preference-based multi-objective reinforcement learning (PbMORL). We jointly learn socially-derived value alignment models (groundings) and a set of value systems that concisely represent different groups of users (clusters) in a society. Each cluster consists of a value system representing the value-based preferences of its members and an approximately Pareto-optimal policy that reflects behaviours aligned with this value system. We evaluate our method against a state-of-the-art PbMORL algorithm and baselines on two MDPs with human values.

Keywords

Cite

@article{arxiv.2602.08835,
  title  = {Learning the Value Systems of Societies with Preference-based Multi-objective Reinforcement Learning},
  author = {Andrés Holgado-Sánchez and Peter Vamplew and Richard Dazeley and Sascha Ossowski and Holger Billhardt},
  journal= {arXiv preprint arXiv:2602.08835},
  year   = {2026}
}

Comments

18 pages, 3 figures. To be published in proceedings of the 25th International Conference on Autonomous Agents and Multi-Agent Systems (AAMAS 2026). This is a full version that includes the supplementary material

R2 v1 2026-07-01T10:28:11.841Z