Geometry-Aware Probabilistic Circuits via Voronoi Tessellations
arXiv cs.LG / 3/13/2026
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Key Points
- The paper proposes Voronoi tessellations to encode local geometric structure directly into probabilistic circuits, addressing the limitation of data-independent mixture weights.
- It formalizes the incompatibility between Voronoi-based geometry and tractable inference and presents two complementary solutions: an approximate inference framework with guaranteed lower and upper bounds, and a structural condition under which exact tractable inference is recovered.
- A differentiable relaxation for Voronoi tessellations is introduced to enable gradient-based learning and end-to-end optimization.
- The approach is empirically validated on standard density estimation tasks, demonstrating practical effectiveness and improved modeling of geometry-aware PCs.
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