Using large data sets to forecast housing prices : a case study of 20 US States
Loading...
Date
Authors
Kabundi, Alain
Miller, Stephen M.
Journal Title
Journal ISSN
Volume Title
Publisher
University of Pretoria, Department of Economics
Abstract
We implement several Bayesian and classical models to forecast housing prices in 20 US states.
In addition to standard vector-autoregressive (VAR) and Bayesian vector autoregressive (BVAR)
models, we also include the information content of 308 additional quarterly series in some
models. Several approaches exist for incorporating information from a large number of series.
We consider two approaches – extracting common factors (principle components) in a Factor-
Augmented Vector Autoregressive (FAVAR) or Factor-Augmented Bayesian Vector
Autoregressive (FABVAR) models or Bayesian shrinkage in a large-scale Bayesian Vector
Autoregressive (LBVAR) models. In addition, we also introduce spatial or causality priors to
augment the forecasting models. Using the period of 1976:Q1 to 1994:Q4 as the in-sample
period and 1995:Q1 to 2003:Q4 as the out-of-sample horizon, we compare the forecast
performance of the alternative models. Based on the average root mean squared error (RMSE)
for the one-, two-, three-, and four–quarters-ahead forecasts, we find that one of the factoraugmented
models generally outperform the large-scale models in the 20 US states examined in
this paper.
Description
Keywords
Housing prices, Forecasting, Factor-augmented VAR (FAVAR) model, Vector autoregressive (VAR) model, Bayesian vector autoregressive (BVAR) model, Large-scale BVAR model
Sustainable Development Goals
Citation
Gupta, R, Kabundi, A & Miller, SM 2009, 'Using large data sets to forecast housing prices: a case study of 20 US States', University of Pretoria, Department of Economics, Working paper series, no. 2009-12. [http://web.up.ac.za/default.asp?ipkCategoryID=736&sub=1&parentid=677&subid=729&ipklookid=3]
