Identifying critical nodes in interdependent networks by GA-XGBoost

被引:3
|
作者
Zhong, Xingju [1 ]
Liu, Renjing [1 ]
机构
[1] Xi An Jiao Tong Univ, Sch management, 28 Xianning West Rd, Xian 710049, Shaanxi, Peoples R China
关键词
Interdependent network; Critical node identification; Machine learning; Genetic algorithm; XGBoost; CENTRALITY;
D O I
10.1016/j.ress.2024.110384
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
Once a critical node is destroyed, the interdependent network is prone to experience severe cascading failure. Due to the coupling, traditional methods are challenging to apply to interdependent networks. Here, we propose a novel comprehensive model based on machine learning. The main work of this data-driven approach is to train the model on a small set of nodes (5 % of the graph) and do the critical node identification on the rest. We collect node centrality indicators to describe the node features and provide informative input data from different dimensions. The uniform node sampling is improved to cluster oversampling, which combines K-means and Synthetic Minority Over-sampling Technique (SMOTE) to select and recreate uniformly distributed training samples. We optimize the XGBoost based on the Genetic algorithm (GA) to overcome the instability of manual parameters. Kendall's tau correlation coefficient, Jaccard similarity coefficient, R2, and RMSE are used as the model performance evaluation metrics. Experiment results confirm that the proposed GA-XGBoost model outperforms others, demonstrating higher adaptability and stability in various situations. The heuristic algorithm-optimized machine learning model offers a viable solution for identifying critical nodes in interdependent networks, which is of great significance for controlling virus propagation and preventing failures.
引用
收藏
页数:13
相关论文
共 50 条
  • [31] 基于GA-XGBoost的天然地震与爆破的小样本分类
    李鸿儒
    李夕海
    牛超
    张云
    刘继昊
    谭笑枫
    地震学报, 2025, 47 (02) : 221 - 231
  • [32] Synergizing GA-XGBoost and QSAR modeling: Breaking down activity aliffs in HDAC1 inhibitors
    Jawarkar, Rahul D.
    Mali, Suraj
    Deshmukh, Prashant K.
    Ingle, Rahul G.
    Al-Hussain, Sami A.
    Al-Mutairi, Aamal A.
    Zaki, Magdi E. A.
    JOURNAL OF MOLECULAR GRAPHICS & MODELLING, 2025, 135
  • [33] A supervised active learning method for identifying critical nodes in IoT networks
    Ojaghi, Behnam
    Dehshibi, Mohammad Mahdi
    Antonopoulos, Angelos
    JOURNAL OF SUPERCOMPUTING, 2024, 80 (12): : 16775 - 16794
  • [34] Comparative analysis of centrality measures for identifying critical nodes in complex networks
    Ugurlu, Onur
    JOURNAL OF COMPUTATIONAL SCIENCE, 2022, 62
  • [35] Identifying critical nodes in complex networks based on distance Laplacian energy
    Yin, Rongrong
    Li, Linhui
    Wang, Yumeng
    Lang, Chun
    Hao, Zhenyang
    Zhang, Le
    CHAOS SOLITONS & FRACTALS, 2024, 180
  • [36] A Novel Algorithm for Identifying Critical Nodes in Networks Based on Local Centrality
    Zheng W.
    Wu Z.
    Yang G.
    Jisuanji Yanjiu yu Fazhan/Computer Research and Development, 2019, 56 (09): : 1872 - 1880
  • [37] Identifying critical nodes in multiplex complex networks by using memetic algorithms
    Qu, Jianglong
    Shi, Xiaoqiu
    Li, Minghui
    Cai, Yong
    Yu, Xiaohong
    Du, Weijie
    PHYSICS LETTERS A, 2025, 529
  • [38] Identifying critical nodes in power networks: A group-driven framework
    Liu, Yangyang
    Song, Aibo
    Shan, Xin
    Xue, Yingying
    Jin, Jiahui
    EXPERT SYSTEMS WITH APPLICATIONS, 2022, 196
  • [39] 基于GA-XGBoost模型的水下螺旋盘管换热器换热量预测分析
    陈于飞
    蔡文剑
    蔡慧
    黄瑶瑶
    低温工程, 2024, (05) : 98 - 103+110
  • [40] Interdependent networks with identical degrees of mutually dependent nodes
    Buldyrev, Sergey V.
    Shere, Nathaniel W.
    Cwilich, Gabriel A.
    PHYSICAL REVIEW E, 2011, 83 (01)