Learning Permutation Distributions via Reflected Diffusion on Ranks
arXiv cs.LG / 3/19/2026
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Key Points
- It proposes Soft-Rank Diffusion, a discrete diffusion framework that models permutations by lifting them to a continuous soft-rank representation to enable smoother, more tractable trajectories.
- The forward process replaces shuffle-based corruption with a structured soft-rank noise, addressing challenges from factorial growth in S_n.
- The reverse process introduces contextualized generalized Plackett-Luce (cGPL) denoisers to better capture sequential decision structures in permutations.
- Experiments on sorting and combinatorial optimization show Soft-Rank Diffusion outperforming prior diffusion baselines, with strong gains in long-sequence settings.
- The approach promises improved permutation modeling for tasks like ranking and scheduling, where scalable, accurate distributions over permutations are valuable.
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