Learning epidemic threshold in complex networks by Convolutional Neural Network

被引:11
作者
Ni, Qi [1 ]
Kang, Jie [1 ]
Tang, Ming [2 ,3 ]
Liu, Ying [4 ,5 ]
Zou, Yong [6 ]
机构
[1] East China Normal Univ, Sch Commun & Elect Engn, Shanghai 200241, Peoples R China
[2] East China Normal Univ, Shanghai Key Lab PMMP, Sch Math Sci, Shanghai 200241, Peoples R China
[3] East China Normal Univ, Shanghai Key Lab Multidimens Informat Proc, Shanghai 200241, Peoples R China
[4] Southwest Petr Univ, Sch Comp Sci, Chengdu 610500, Peoples R China
[5] Univ Elect Sci & Technol China, Big Data Res Ctr, Chengdu 610054, Peoples R China
[6] East China Normal Univ, Sch Phys & Elect Sci, Shanghai 200241, Peoples R China
基金
上海市自然科学基金; 中国国家自然科学基金;
关键词
D O I
10.1063/1.5121401
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Deep learning has taken part in the competition since not long ago to learn and identify phase transitions in physical systems such as many-body quantum systems, whose underlying lattice structures are generally regular as they are in Euclidean space. Real networks have complex structural features that play a significant role in dynamics in them, and thus the structural and dynamical information of complex networks cannot be directly learned by existing neural network models. Here, we propose a novel and effective framework to learn the epidemic threshold in complex networks by combining the structural and dynamical information into the learning procedure. Considering the strong performance of learning in Euclidean space, the Convolutional Neural Network (CNN) is used, and, with the help of "confusion scheme," we can identify precisely the outbreak threshold of epidemic dynamics. To represent the high-dimensional network data set in Euclidean space for CNN, we reduce the dimensionality of a network by using graph representation learning algorithms and discretize the embedded space to convert it into an imagelike structure. We then creatively merge the nodal dynamical states with the structural embedding by multichannel images. In this manner, the proposed model can draw the conclusion from both structural and dynamical information. A large number of simulations show a great performance in both synthetic and empirical network data sets. Our end to end machine learning framework is robust and universally applicable to complex networks with arbitrary size and topology. Published under license by AIP Publishing.
引用
收藏
页数:10
相关论文
共 50 条
  • [21] Learning to Prune Filters in Convolutional Neural Networks
    Huang, Qiangui
    Zhou, Kevin
    You, Suya
    Neumann, Ulrich
    2018 IEEE WINTER CONFERENCE ON APPLICATIONS OF COMPUTER VISION (WACV 2018), 2018, : 709 - 718
  • [22] Hierarchical Color Learning in Convolutional Neural Networks
    Hickey, Chris
    Zhang, Byoung-Tak
    2020 IEEE/CVF CONFERENCE ON COMPUTER VISION AND PATTERN RECOGNITION WORKSHOPS (CVPRW 2020), 2020, : 1559 - 1562
  • [23] Convolutional Neural Networks Learning Respiratory data
    Perna, Diego
    PROCEEDINGS 2018 IEEE INTERNATIONAL CONFERENCE ON BIOINFORMATICS AND BIOMEDICINE (BIBM), 2018, : 2109 - 2113
  • [24] Learning the number of filters in convolutional neural networks
    Li, Jue
    Cao, Feng
    Cheng, Honghong
    Qian, Yuhua
    INTERNATIONAL JOURNAL OF BIO-INSPIRED COMPUTATION, 2021, 17 (02) : 75 - 84
  • [25] Lateral Representation Learning in Convolutional Neural Networks
    Ballester, Pedro
    Correa, Ulisses Brisolara
    Araujo, Ricardo Matsumura
    2018 INTERNATIONAL JOINT CONFERENCE ON NEURAL NETWORKS (IJCNN), 2018,
  • [26] LEARNING CONNECTED ATTENTIONS FOR CONVOLUTIONAL NEURAL NETWORKS
    Ma, Xu
    Guo, Jingda
    Tang, Sihai
    Qiao, Zhinan
    Chen, Qi
    Yang, Qing
    Fu, Song
    Palacharla, Paparao
    Wang, Nannan
    Wang, Xi
    Proceedings - IEEE International Conference on Multimedia and Expo, 2021,
  • [27] Employing Convolutional Neural Networks for Continual Learning
    Jasinski, Marcin
    Wozniak, Michal
    ARTIFICIAL INTELLIGENCE AND SOFT COMPUTING, ICAISC 2022, PT I, 2023, 13588 : 288 - 297
  • [28] On the epidemic threshold of a network
    Cherniavskyi, Vadym
    Dennis, Gabriel
    Kingan, S. R.
    INVOLVE, A JOURNAL OF MATHEMATICS, 2025, 18 (02): : 283 - 296
  • [29] Deep learning with convolutional neural network in radiology
    Koichiro Yasaka
    Hiroyuki Akai
    Akira Kunimatsu
    Shigeru Kiryu
    Osamu Abe
    Japanese Journal of Radiology, 2018, 36 : 257 - 272
  • [30] Deep learning with convolutional neural network in radiology
    Yasaka, Koichiro
    Akai, Hiroyuki
    Kunimatsu, Akira
    Kiryu, Shigeru
    Abe, Osamu
    JAPANESE JOURNAL OF RADIOLOGY, 2018, 36 (04) : 257 - 272