4.7 Article

Inferring network structure with unobservable nodes from time series data

Journal

CHAOS
Volume 32, Issue 1, Pages -

Publisher

AIP Publishing
DOI: 10.1063/5.0076521

Keywords

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Funding

  1. National Natural Science Foundation of China (NSFC) [61673070]

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Network structures are crucial in various systems, but real cases often have incomplete or unavailable observable nodes and connections. This paper proposes a data-driven deep learning model called GIN, which infers the unknown parts of a network structure and the initial states of observable nodes using time series data from network dynamics. Experimental results demonstrate up to 90% accuracy in inferring the unknown parts and linear accuracy decline with the increase of unobservable nodes. This framework has wide applications when network structure is hard to obtain and time series data is rich.
Network structures play important roles in social, technological, and biological systems. However, the observable nodes and connections in real cases are often incomplete or unavailable due to measurement errors, private protection issues, or other problems. Therefore, inferring the complete network structure is useful for understanding human interactions and complex dynamics. The existing studies have not fully solved the problem of the inferring network structure with partial information about connections or nodes. In this paper, we tackle the problem by utilizing time series data generated by network dynamics. We regard the network inference problem based on dynamical time series data as a problem of minimizing errors for predicting states of observable nodes and proposed a novel data-driven deep learning model called Gumbel-softmax Inference for Network (GIN) to solve the problem under incomplete information. The GIN framework includes three modules: a dynamics learner, a network generator, and an initial state generator to infer the unobservable parts of the network. We implement experiments on artificial and empirical social networks with discrete and continuous dynamics. The experiments show that our method can infer the unknown parts of the structure and the initial states of the observable nodes with up to 90% accuracy. The accuracy declines linearly with the increase of the fractions of unobservable nodes. Our framework may have wide applications where the network structure is hard to obtain and the time series data is rich.

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