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Modeling Uncertainty: Constraint-Based Belief States in Imperfect-Information Games

Published: July 25, 2025 | arXiv ID: 2507.19263v2

By: Achille Morenville, Éric Piette

Potential Business Impact:

Helps game players guess hidden pieces better.

Business Areas:
Simulation Software

In imperfect-information games, agents must make decisions based on partial knowledge of the game state. The Belief Stochastic Game model addresses this challenge by delegating state estimation to the game model itself. This allows agents to operate on externally provided belief states, thereby reducing the need for game-specific inference logic. This paper investigates two approaches to represent beliefs in games with hidden piece identities: a constraint-based model using Constraint Satisfaction Problems and a probabilistic extension using Belief Propagation to estimate marginal probabilities. We evaluated the impact of both representations using general-purpose agents across two different games. Our findings indicate that constraint-based beliefs yield results comparable to those of probabilistic inference, with minimal differences in agent performance. This suggests that constraint-based belief states alone may suffice for effective decision-making in many settings.

Country of Origin
🇧🇪 Belgium

Page Count
4 pages

Category
Computer Science:
Artificial Intelligence