Forecasting real US house price : principal components versus Bayesian regressions

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Authors

Kabundi, Alain

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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.

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Keywords

Bayesian regressions, Principal components, Large-cross sections

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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]