The role of housing sentiment in forecasting U.S. home sales growth : evidence from a Bayesian compressed vector autoregressive model
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Date
Authors
Gupta, Rangan
Lau, Chi Keung Marco
Plakandaras, Vasilios
Wong, Wing-Keung
Journal Title
Journal ISSN
Volume Title
Publisher
Routledge
Abstract
Accurate forecasts of home sales can provide valuable information
for not only policymakers, but also financial institutions and real
estate professionals. Against this backdrop, the objective of our
article is to analyse the role of consumers’ home buying attitudes
in forecasting quarterly U.S. home sales growth. Our results show
that the home sentiment index in standard classical and
Minnesota prior-based Bayesian V.A.R.s fail to add to the forecasting
accuracy of the growth of home sales derived from standard
economic variables already included in the models. However,
when shrinkage is achieved by compressing the data using a
Bayesian compressed V.A.R. (instead of the parameters as in the
B.V.A.R.), growth of U.S. home sales can be forecasted more accurately,
with the housing market sentiment improving the accuracy
of the forecasts relative to the information contained in economic
variables only.
Description
Keywords
Home sales, Housing sentiment, Classical and Bayesian vector autoregressive models
Sustainable Development Goals
Citation
Rangan Gupta, Chi Keung Marco Lau, Vasilios Plakandaras & Wing-Keung
Wong (2019) The role of housing sentiment in forecasting U.S. home sales growth: evidence from a
Bayesian compressed vector autoregressive model, Economic Research-Ekonomska Istraživanja,
32:1, 2554-2567, DOI: 10.1080/1331677X.2019.1650657.
