Probabilistic Graph Cuts
Probabilistic relaxations of graph cuts offer a differentiable alternative to spectral clustering, enabling end-to-end and online learning without eigendecompositions, yet prior work centered on RatioCut and lacked general guarantees and principled gradients. We present a unified probabilistic framework that covers a wide class of cuts, including Normalized Cut. Our framework provides tight analytic upper bounds on expected discrete cuts via integral representations and Gauss hypergeometric functions with closed-form forward and backward. Together, these results deliver a rigorous, numerically stable foundation for scalable, differentiable graph partitioning covering a wide range of clustering and contrastive learning objectives.
Nov-6-2025
- Country:
- North America > United States > Colorado > Boulder County > Boulder (0.04)
- Genre:
- Research Report (0.50)
- Industry:
- Education > Educational Setting > Online (0.48)
- Technology: