Machine learning assisted network classification from symbolic time-series

被引:11
|
作者
Panday, Atish [1 ]
Lee, Woo Seok [2 ]
Dutta, Subhasanket [1 ]
Jalan, Sarika [1 ,3 ]
机构
[1] Indian Inst Technol Indore, Dept Phys, Complex Syst Lab, Indore 453552, India
[2] Inst Basic Sci IBS, Ctr Theoret Phys Complex Syst, Daejeon 34126, South Korea
[3] Indian Inst Technol Indore, Dept Biosci & Biomed Engn, Indore 453552, India
关键词
KURAMOTO; SYNCHRONIZATION; SIMULATION;
D O I
10.1063/5.0046406
中图分类号
O29 [应用数学];
学科分类号
070104 ;
摘要
Machine learning techniques have been witnessing perpetual success in predicting and understanding behaviors of a diverse range of complex systems. By employing a deep learning method on limited time-series information of a handful of nodes from large-size complex systems, we label the underlying network structures assigned in different classes. We consider two popular models, namely, coupled Kuramoto oscillators and susceptible-infectious-susceptible to demonstrate our results. Importantly, we elucidate that even binary information of the time evolution behavior of a few coupled units (nodes) yields as accurate classification of the underlying network structure as achieved by the actual time-series data. The key of the entire process reckons on feeding the time-series information of the nodes when the system evolves in a partially synchronized state, i.e., neither completely incoherent nor completely synchronized. The two biggest advantages of our method over previous existing methods are its simplicity and the requirement of the time evolution of one largest degree node or a handful of the nodes to predict the classification of large-size networks with remarkable accuracy.
引用
收藏
页数:11
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