中国科学:信息科学(英文版)2024,Vol.67Issue(12) :236-251.DOI:10.1007/s11432-023-4216-y

Learning continuous network emerging dynamics from scarce observations via data-adaptive stochastic processes

Jiaxu CUI Qipeng WANG Bingyi SUN Jiming LIU Bo YANG
中国科学:信息科学(英文版)2024,Vol.67Issue(12) :236-251.DOI:10.1007/s11432-023-4216-y

Learning continuous network emerging dynamics from scarce observations via data-adaptive stochastic processes

Jiaxu CUI 1Qipeng WANG 1Bingyi SUN 2Jiming LIU 3Bo YANG1
扫码查看

作者信息

  • 1. College of Computer Science and Technology,Jilin University,Changchun 130012,China;Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education,Jilin University,Changchun 130012,China
  • 2. Key Laboratory of Symbolic Computation and Knowledge Engineering of Ministry of Education,Jilin University,Changchun 130012,China;Public Computer Education and Research Center,Jilin University,Changchun 130012,China
  • 3. Department of Computer Science,Hong Kong Baptist University,Hong Kong 999077,China
  • 折叠

Abstract

Learning network dynamics from the empirical structure and spatio-temporal observation data is crucial to revealing the interaction mechanisms of complex networks in a wide range of domains.However,most existing methods only aim at learning network dynamic behaviors generated by a specific ordinary dif-ferential equation instance,resulting in ineffectiveness for new ones,and generally require dense observations.The observed data,especially from network emerging dynamics,are usually difficult to obtain,which brings trouble to model learning.Therefore,learning accurate network dynamics with sparse,irregularly-sampled,partial,and noisy observations remains a fundamental challenge.We introduce a new concept of the stochas-tic skeleton and its neural implementation,i.e.,neural ODE processes for network dynamics(NDP4ND),a new class of stochastic processes governed by stochastic data-adaptive network dynamics,to overcome the challenge and learn continuous network dynamics from scarce observations.Intensive experiments conducted on various network dynamics in ecological population evolution,phototaxis movement,brain activity,epi-demic spreading,and real-world empirical systems,demonstrate that the proposed method has excellent data adaptability and computational efficiency,and can adapt to unseen network emerging dynamics,producing accurate interpolation and extrapolation with reducing the ratio of required observation data to only about 6%and improving the learning speed for new dynamics by three orders of magnitude.

Key words

complex networks/network dynamics/emerging spatio-temporal dynamics/neural processes

引用本文复制引用

出版年

2024
中国科学:信息科学(英文版)
中国科学院

中国科学:信息科学(英文版)

CSTPCDEI
影响因子:0.715
ISSN:1674-733X
段落导航相关论文