This article investigates the spatial interdependence within China's real estate industry, a sector assuming increasing importance in the national economy. The Global Vector Autoregressive (GVAR) model allows us to explicitly… Click to show full abstract
This article investigates the spatial interdependence within China's real estate industry, a sector assuming increasing importance in the national economy. The Global Vector Autoregressive (GVAR) model allows us to explicitly address the presence of spatial linkages, including spillover and backwash effects, without a stringent requirement on data. Applying the model to monthly Chinese provincial data for the first time we highlight clear advantages in forecasting and steady-state value prediction. We also demonstrate through the contemporaneous correlation coefficients a growing divide between the previously highly industrialized north and the rest of China. The insights provided by our empirical study have clear value to a wide range of audiences, including researchers, policy makers, and business investors.
               
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