Predicting the Robustness of Large Real-World Social Networks Using a Machine Learning Model

被引:0
|
作者
Nguyen, Ngoc-Kim-Khanh [1 ]
Nguyen, Quang [2 ,3 ,4 ]
Pham, Hai-Ha [5 ]
Le, Thi-Trang [4 ]
Nguyen, Tuan-Minh [4 ]
Cassi, Davide [6 ,7 ]
Scotognella, Francesco [8 ,9 ]
Alfieri, Roberto [6 ,7 ]
Bellingeri, Michele [6 ,7 ,8 ]
机构
[1] Van Lang Univ, Fac Basic Sci, Ho Chi Minh, Vietnam
[2] Duy Tan Univ, Inst Fundamental & Appl Sci, Ho Chi Minh 700000, Vietnam
[3] Duy Tan Univ, Fac Nat Sci, Da Nang 550000, Vietnam
[4] Vietnam Natl Univ Ho Chi Minh City, John Neumann Inst, Ho Chi Minh, Vietnam
[5] Vietnam Natl Univ, Int Univ, Dept Math, Ho Chi Minh, Vietnam
[6] Univ Parma, Dipartimento Sci Matemat Fis & Informat, Parco Area Sci 7-A, I-43124 Parma, Italy
[7] INFN, Grp Collegato Parma, I-43124 Parma, Italy
[8] Politecn Milan, Dipartimento Fis, Piazza Leonardo Vinci 32, I-20133 Milan, Italy
[9] Ist Italiano Tecnol, Ctr Nano Sci & Technol PoliMi, Via Giovanni Pascoli 70-3, I-20133 Milan, Italy
基金
欧洲研究理事会;
关键词
EXPLOSIVE PERCOLATION; COMPLEX; STRATEGIES; RESILIENCE; INTERNET;
D O I
10.1155/2022/3616163
中图分类号
O1 [数学];
学科分类号
0701 ; 070101 ;
摘要
Computing the robustness of a network, i.e., the capacity of a network holding its main functionality when a proportion of its nodes/edges are damaged, is useful in many real applications. The Monte Carlo numerical simulation is the commonly used method to compute network robustness. However, it has a very high computational cost, especially for large networks. Here, we propose a methodology such that the robustness of large real-world social networks can be predicted using machine learning models, which are pretrained using existing datasets. We demonstrate this approach by simulating two effective node attack strategies, i.e., the recalculated degree (RD) and initial betweenness (IB) node attack strategies, and predicting network robustness by using two machine learning models, multiple linear regression (MLR) and the random forest (RF) algorithm. We use the classic network robustness metric R as a model response and 8 network structural indicators (NSI) as predictor variables and trained over a large dataset of 48 real-world social networks, whose maximum number of nodes is 265,000. We found that the RF model can predict network robustness with a mean squared error (RMSE) of 0.03 and is 30% better than the MLR model. Among the results, we found that the RD strategy has more efficacy than IB for attacking real-world social networks. Furthermore, MLR indicates that the most important factors to predict network robustness are the scale-free exponent alpha and the average node degree < k >. On the contrary, the RF indicates that degree assortativity a, the global closeness, and the average node degree < k > are the most important factors. This study shows that machine learning models can be a promising way to infer social network robustness.
引用
收藏
页数:16
相关论文
共 50 条
  • [31] Real-world learning with Markov logic networks
    Domingos, P
    [J]. MACHINE LEARNING: ECML 2004, PROCEEDINGS, 2004, 3201 : 17 - 17
  • [32] Fall Detection in Individuals With Lower Limb Amputations Using Mobile Phones: Machine Learning Enhances Robustness for Real-World Applications
    Shawen, Nicholas
    Lonini, Luca
    Mummidisetty, Chaithanya Krishna
    Shparii, Ilona
    Albert, Mark V.
    Kording, Konrad
    Jayaraman, Arun
    [J]. JMIR MHEALTH AND UHEALTH, 2017, 5 (10):
  • [33] Application of machine learning in predicting survival outcomes involving real-world data: a scoping review
    Huang, Yinan
    Li, Jieni
    Li, Mai
    Aparasu, Rajender R.
    [J]. BMC MEDICAL RESEARCH METHODOLOGY, 2023, 23 (01)
  • [34] Application of machine learning in predicting survival outcomes involving real-world data: a scoping review
    Yinan Huang
    Jieni Li
    Mai Li
    Rajender R. Aparasu
    [J]. BMC Medical Research Methodology, 23
  • [35] Predicting Clinical Remission of Chronic Urticaria Using Random Survival Forests: Machine Learning Applied to Real-World Data
    Irina Pivneva
    Maria-Magdalena Balp
    Yvonne Geissbühler
    Thomas Severin
    Serge Smeets
    James Signorovitch
    Jimmy Royer
    Yawen Liang
    Tom Cornwall
    Jutong Pan
    Andrii Danyliv
    Sarah Jane McKenna
    Alexander M. Marsland
    Weily Soong
    [J]. Dermatology and Therapy, 2022, 12 : 2747 - 2763
  • [36] Towards Machine Learning with Zero Real-World Data
    Kang, Cholmin
    Jung, Hyunwoo
    Lee, Youngki
    [J]. WEARSYS'19: PROCEEDINGS OF THE 5TH ACM WORKSHOP ON WEARABLE SYSTEMS AND APPLICATIONS, 2019, : 41 - 46
  • [37] Predicting Blood Concentration of Tacrolimus in Patients With Autoimmune Diseases Using Machine Learning Techniques Based on Real-World Evidence
    Zheng, Ping
    Yu, Ze
    Li, Liren
    Liu, Shiting
    Lou, Yan
    Hao, Xin
    Yu, Peng
    Lei, Ming
    Qi, Qiaona
    Wang, Zeyuan
    Gao, Fei
    Zhang, Yuqing
    Li, Yilei
    [J]. FRONTIERS IN PHARMACOLOGY, 2021, 12
  • [38] Real-World Evidence, Causal Inference, and Machine Learning
    Crown, William H.
    [J]. VALUE IN HEALTH, 2019, 22 (05) : 587 - 592
  • [39] Predicting Clinical Remission of Chronic Urticaria Using Random Survival Forests: Machine Learning Applied to Real-World Data
    Pivneva, Irina
    Balp, Maria-Magdalena
    Geissbuhler, Yvonne
    Severin, Thomas
    Smeets, Serge
    Signorovitch, James
    Royer, Jimmy
    Liang, Yawen
    Cornwall, Tom
    Pan, Jutong
    Danyliv, Andrii
    McKenna, Sarah Jane
    Marsland, Alexander M.
    Soong, Weily
    [J]. DERMATOLOGY AND THERAPY, 2022, 12 (12) : 2747 - 2763
  • [40] Forecasting real-world complex networks' robustness to node attack using network structure indexes
    Bellingeri, Michele
    Turchetto, Massimiliano
    Scotognella, Francesco
    Alfieri, Roberto
    Nguyen, Ngoc-Kim-Khanh
    Nguyen, Quang
    Cassi, Davide
    [J]. FRONTIERS IN PHYSICS, 2023, 11