Critical Nodes Identification Algorithm Based on ResNet-CBAM

Xujie Li;Fei Shao;Ying Sun;Haotian Li;Jiayi Huang
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Abstract

The identification of critical nodes in networks is of substantial practical significance. For instance, it can expedite information propagation within networks, target vulnerable links to enhance robustness, and optimize resource allocation by reducing redundancy and lowering costs. To improve the accuracy of critical node identification, we propose an algorithm that integrates complex networks, propagation models, and deep learning techniques. The algorithm generates low-complexity features that include the characteristics of nodes and their neighboring nodes. A ResNet-CBAM network is then designed to identify critical nodes. To assess node importance, a method has been proposed that considers both propagation range and propagation efficiency, using their product as the evaluation criterion. Experimental results show that, compared to various centrality-based algorithms and other deep learning methods, our proposed algorithm outperforms others in terms of recognition accuracy across different types of networks.
基于ResNet-CBAM的关键节点识别算法
网络中关键节点的识别具有重要的现实意义。例如,它可以加快信息在网络中的传播,针对脆弱链路增强鲁棒性,并通过减少冗余和降低成本来优化资源分配。为了提高关键节点识别的准确性,我们提出了一种集成复杂网络、传播模型和深度学习技术的算法。该算法生成低复杂度特征,包括节点及其相邻节点的特征。然后设计ResNet-CBAM网络来识别关键节点。为了评估节点的重要性,提出了一种同时考虑传播范围和传播效率的方法,以它们的乘积作为评价标准。实验结果表明,与各种基于中心性的算法和其他深度学习方法相比,我们提出的算法在不同类型网络的识别精度方面优于其他算法。
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