Using large data sets to forecast house prices : a case study of twenty U.S. states
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Date
Authors
Gupta, Rangan
Kabundi, Alain
Miller, Stephen M.
Journal Title
Journal ISSN
Volume Title
Publisher
American Real Estate Society
Abstract
Several Bayesian and classical models are used to forecast house prices in 20 states in
the United States. There are two approaches: extracting common factors (principle
components) in a factor-augmented vector autoregressive or factor-augmented Bayesian
vector autoregressive models or Bayesian shrinkage in a large-scale Bayesian vector
autoregressive models. The study compares the forecast performance of the 1976:Q1 to
1994:Q4 in-sample period to the out-of-sample horizon 1995:Q1 to 2009:Q1 period. The
findings provide mixed evidence on the role of macroeconomic fundamentals in
improving the forecasting performance of time-series models. For 13 states, models that
include the information of macroeconomic fundamentals improve the forecasting
performance, while for seven states they do not.
Description
Keywords
Bayesian vector autoregressive (BVAR) model, Vector autoregressive (VAR) model, Factor-augmented VAR (FAVAR) model, Spatial Bayesian VAR (SBVAR) model, Spatial Bayesian FAVAR (SFABVAR) model, Spatial large-scale BVAR (SLBVAR) model
Sustainable Development Goals
Citation
Gupta, R, Kabundi, A & Miller, SM 2011, 'Using large data sets to forecast house prices : a case study of twenty U.S. states', Journal of Housing Research, vol. 20, no. 2, pp. 161-191.
