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Structure As Search: Unsupervised Permutation Learning for Combinatorial Optimization

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We propose a non-autoregressive framework for the Travelling Salesman Problem where solutions emerge directly from learned permutations, without requiring explicit search. By applying a similarity transformation to Hamiltonian cycles, the model learns to approximate permutation matrices via continuous relaxations. Our unsupervised approach achieves competitive performance against classical heuristics, demonstrating that the inherent structure of the problem can effectively guide combinatorial optimization without sequential decision-making. Our method offers concrete evidence that neural networks can directly capture and exploit combinatorial structure.

Yimeng Min, Carla P. Gomes• 2025

Related benchmarks

TaskDatasetResultRank
Traveling Salesman ProblemTSP-500
Solution Length50.73
38
Traveling Salesman ProblemTSP N=100
Cost (%)31.24
32
Traveling Salesman ProblemTSP N=200
Cost Gap0.3851
27
Traveling Salesman ProblemTSP 1000
Objective Value79.41
23
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