Using large data sets to forecast house prices : a case study of twenty U.S. states

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Gupta, Rangan
Kabundi, Alain
Miller, Stephen M.

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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.

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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

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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.