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paperarXivTrust 82 · PrimaryPublished 2d agoLive · 22h ago

Neural Certificate Pricing for Combinatorial Optimization Problems

Combinatorial optimization (CO) problems are difficult because certifiable discrete structure induces exponential search. One needs to search over the set exponentially many candidates to certify optimality, however, the structural feasibility of a path, packing, or cover can be verified in polynomial time once supplied. In this study, we introduce Neural Certificate Pricing (NCP) that exploits this asymmetry under an unsupervised learning framework. A neural network is trained to predict certificate-level dual prices, while a structured recovery layer constructs the induced primal marginal. N

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  • Linked via arxiv authorJingyi Chen

    Neural Certificate Pricing for Combinatorial Optimization Problems

  • Linked via arxiv authorXinyuan Zhang

    Neural Certificate Pricing for Combinatorial Optimization Problems

  • Linked via arxiv authorXinwu Qian

    Neural Certificate Pricing for Combinatorial Optimization Problems

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