“…On this basis, the development trend of complex network time series is predicted. Based on historical data, the prediction model of complex network time series is constructed to analyse and predict the changing trend of a complex network and extract its internal evolution mechanism (Anghinoni et al, 2019; Meng, Jiang, & Wei, 2020). Based on the overall measurement index of complex network time series, some scholars have proposed a variety of prediction algorithms, such as the causal complex network prediction method for multivariate time series (Jiang et al, 2017), the sliding window‐based algorithm for complex networks time series (Carmona et al, 2019), the complex network prediction from chaotic time series on Riemannian manifold (Sun, 2016), the prediction method of complex network evolution based on similar dynamics (Wu et al, 2020), the prediction of systemic risk contagion based on a dynamic complex network model using machine learning algorithm (Yu & Zhao, 2020), and the intelligent forecasting method of wave pattern based on multidimensional information complex network time series (Liu et al, 2018).…”