Modelling cointegration and Granger causality network to detect long-term equilibrium and diffusion paths in the financial system

R Soc Open Sci. 2018 Mar 28;5(3):172092. doi: 10.1098/rsos.172092. eCollection 2018 Mar.

Abstract

Microscopic factors are the basis of macroscopic phenomena. We proposed a network analysis paradigm to study the macroscopic financial system from a microstructure perspective. We built the cointegration network model and the Granger causality network model based on econometrics and complex network theory and chose stock price time series of the real estate industry and its upstream and downstream industries as empirical sample data. Then, we analysed the cointegration network for understanding the steady long-term equilibrium relationships and analysed the Granger causality network for identifying the diffusion paths of the potential risks in the system. The results showed that the influence from a few key stocks can spread conveniently in the system. The cointegration network and Granger causality network are helpful to detect the diffusion path between the industries. We can also identify and intervene in the transmission medium to curb risk diffusion.

Keywords: Granger causality; cointegration; complex network; financial system; time series.

Associated data

  • figshare/10.6084/m9.figshare.c.4035215