AICYLGJul 28, 2025

Learning the Value Systems of Societies from Preferences

arXiv:2507.20728v12 citationsh-index: 17ECAI
Originality Incremental advance
AI Analysis

This addresses the challenge of aligning AI with ethical human values by modeling societal diversity, though it is incremental in applying clustering to value learning.

The paper tackles the problem of learning societal value systems from human preferences, proposing a heuristic deep clustering method that learns shared value groundings and diverse group-based value systems, evaluated with real data on traveling decisions.

Aligning AI systems with human values and the value-based preferences of various stakeholders (their value systems) is key in ethical AI. In value-aware AI systems, decision-making draws upon explicit computational representations of individual values (groundings) and their aggregation into value systems. As these are notoriously difficult to elicit and calibrate manually, value learning approaches aim to automatically derive computational models of an agent's values and value system from demonstrations of human behaviour. Nonetheless, social science and humanities literature suggest that it is more adequate to conceive the value system of a society as a set of value systems of different groups, rather than as the simple aggregation of individual value systems. Accordingly, here we formalize the problem of learning the value systems of societies and propose a method to address it based on heuristic deep clustering. The method learns socially shared value groundings and a set of diverse value systems representing a given society by observing qualitative value-based preferences from a sample of agents. We evaluate the proposal in a use case with real data about travelling decisions.

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