cs.AI updates on arXiv.org 10月29日 12:25
自监督学习在组合优化中的应用
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本文探讨了自监督学习在组合优化中的应用,提出了一种解决离散约束优化问题的端到端可微框架,通过分解神经网络输出,确保了高效的质量保留近似。

arXiv:2510.24039v1 Announce Type: cross Abstract: Self-Supervised Learning (SSL) for Combinatorial Optimization (CO) is an emerging paradigm for solving combinatorial problems using neural networks. In this paper, we address a central challenge of SSL for CO: solving problems with discrete constraints. We design an end-to-end differentiable framework that enables us to solve discrete constrained optimization problems with neural networks. Concretely, we leverage algorithmic techniques from the literature on convex geometry and Carath\'eodory's theorem to decompose neural network outputs into convex combinations of polytope corners that correspond to feasible sets. This decomposition-based approach enables self-supervised training but also ensures efficient quality-preserving rounding of the neural net output into feasible solutions. Extensive experiments in cardinality-constrained optimization show that our approach can consistently outperform neural baselines. We further provide worked-out examples of how our method can be applied beyond cardinality-constrained problems to a diverse set of combinatorial optimization tasks, including finding independent sets in graphs, and solving matroid-constrained problems.

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自监督学习 组合优化 神经网络 离散约束 优化问题
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