cs.AI updates on arXiv.org 11月12日 13:07
GAMA:基于图神经网络的VRP解决方案
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本文提出了一种名为GAMA的神经网络搜索方法,用于解决车辆路径问题。GAMA通过图神经网络编码问题实例及其演化的解决方案,并通过多模态注意力机制和门控融合机制来优化性能。

arXiv:2511.07850v1 Announce Type: new Abstract: Recent advances in neural neighborhood search methods have shown potential in tackling Vehicle Routing Problems (VRPs). However, most existing approaches rely on simplistic state representations and fuse heterogeneous information via naive concatenation, limiting their ability to capture rich structural and semantic context. To address these limitations, we propose GAMA, a neural neighborhood search method with Graph-aware Multi-modal Attention model in VRP. GAMA encodes the problem instance and its evolving solution as distinct modalities using graph neural networks, and models their intra- and inter-modal interactions through stacked self- and cross-attention layers. A gated fusion mechanism further integrates the multi-modal representations into a structured state, enabling the policy to make informed and generalizable operator selection decisions. Extensive experiments conducted across various synthetic and benchmark instances demonstrate that the proposed algorithm GAMA significantly outperforms the recent neural baselines. Further ablation studies confirm that both the multi-modal attention mechanism and the gated fusion design play a key role in achieving the observed performance gains.

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车辆路径问题 神经网络搜索 图神经网络 多模态注意力
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