Forecasting real US house price : principal components versus Bayesian regressions
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Date
Authors
Kabundi, Alain
Journal Title
Journal ISSN
Volume Title
Publisher
University of Pretoria, Department of Economics
Abstract
This paper analyzes the ability of principal component regressions and Bayesian
regression methods under Gaussian and double-exponential prior in forecasting the real
house price of the United States (US), based on a monthly dataset of 112
macroeconomic variables. Using an in-sample period of 1992:01 to 2000:12, Bayesian
regressions are used to forecast real US house prices at the twelve-months-ahead forecast
horizon over the out-of-sample period of 2001:01 to 2004:10. In terms of the Mean
Square Forecast Errors (MSFEs), our results indicate that a principal component
regression with only one factor is best-suited for forecasting the real US house price.
Amongst the Bayesian models, the regression based on the double exponential prior
outperforms the model with Gaussian assumptions.
Description
Keywords
Bayesian regressions, Principal components, Large-cross sections
Sustainable Development Goals
Citation
Gupta, R & Kabundi, A 2009, 'Forecasting real US house price: principal components versus Bayesian regressions', University of Pretoria, Department of Economics, Working paper series, no. 2009-07. [http://web.up.ac.za/default.asp?ipkCategoryID=736&sub=1&parentid=677&subid=729&ipklookid=3]