cs.AI updates on arXiv.org 10月02日
改进CVRP切割平面法:图粗化与随机性增强
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本文提出通过图粗化与随机性增强技术,改进切割平面法在车辆路径问题中的应用,提升模型生成有效不等式的质量,并首次识别出框架容量不等式。

arXiv:2510.00958v1 Announce Type: new Abstract: The identification of valid inequalities, such as the rounded capacity inequalities (RCIs), is a key component of cutting plane methods for the Capacitated Vehicle Routing Problem (CVRP). While a deep learning-based separation method can learn to find high-quality cuts, our analysis reveals that the model produces fewer cuts than expected because it is insufficiently sensitive to generate a diverse set of generated subsets. This paper proposes an alternative: enhancing the performance of a trained model at inference time through a new test-time search with stochasticity. First, we introduce stochastic edge selection into the graph coarsening procedure, replacing the previously proposed greedy approach. Second, we propose the Graph Coarsening History-based Partitioning (GraphCHiP) algorithm, which leverages coarsening history to identify not only RCIs but also, for the first time, the Framed capacity inequalities (FCIs). Experiments on randomly generated CVRP instances demonstrate the effectiveness of our approach in reducing the dual gap compared to the existing neural separation method. Additionally, our method discovers effective FCIs on a specific instance, despite the challenging nature of identifying such cuts.

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CVRP 切割平面法 图粗化 随机性 框架容量不等式
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