File(s) not publicly available
Forecasting house prices using dynamic model averaging approach: evidence from China
Forecasting house price has been of great interests for macroeconomists, policy makers and investors in recent years. To improve the forecasting accuracy, this paper introduces a dynamic model averaging (DMA) method to forecast the growth rate of house prices in 30 major Chinese cities. The advantage of DMA is that this method allows both the sets of predictors (forecasting models) as well as their coefficients to change over time. Both recursive and rolling forecasting modes are applied to compare the performance of DMA with other traditional forecasting models. Furthermore, a model confidence set (MCS) test is used to statistically evaluate the forecasting efficiency of different models. The empirical results reveal that DMA generally outperforms other models, such as Bayesian model averaging (BMA), information-theoretic model averaging (ITMA) and equal-weighted averaging (EW), in both recursive and rolling forecasting modes. In addition, in recent years it is found that the Google search index, instead of fundamental macroeconomic or monetary indicators, has developed greater predictive power for house price in China.
History
Publication status
- Published
Journal
Economic ModellingISSN
0264-9993Publisher
Elsevier BVPublisher URL
External DOI
Volume
61Page range
147-155Department affiliated with
- Business and Management Publications
- Accounting and Finance Publications
Full text available
- No
Peer reviewed?
- Yes