Conflict-Free Policy Languages for Probabilistic ML Predicates: A Framework and Case Study with the Semantic Router DSL
arXiv cs.LG / 3/20/2026
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Key Points
- It introduces a three-level decidability framework for conflicts in policy languages when signals are probabilistic ML predicates, showing crisp conflicts are SAT-decidable, embedding conflicts relate to spherical geometry, and classifier conflicts are undecidable without distributional knowledge.
- It identifies embedding conflicts as the dominant practical issue and proposes using a temperature-scaled softmax to partition embedding space into Voronoi regions to prevent co-firing without retraining.
- The mechanisms for conflict detection and prevention have been implemented in the Semantic Router DSL, a production routing language for LLM inference, illustrating practical applicability.
- The work discusses broader applicability to semantic RBAC and API gateway policy beyond routing, indicating potential cross-domain impact.
- The paper argues that existing policy languages assume crisp predicates, and this framework enables conflict-free operation in probabilistic ML-driven routing.
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