Abstract
Professional house price forecast data are consistent with a rational model where agents must learn about the parameters of the house price growth process and the underlying state of the housing market. Slow learning about the long-run mean generates overreaction to forecast revisions and a modest response of forecasts to lagged realizations. Heterogeneity in signals and priors about the long-run mean helps the model account for cross-sectional dispersion in forecasts. Introducing behavioral biases helps improve the model's predictions for short-horizon overreaction and dispersion. Using a cross-section of forecasters and a term structure of forecasts are crucial for inference.
Full Citation
Li, Zigang, Stijn Van Nieuwerburgh, and Wang Renxuan. “Understanding Rationality and Disagreement in House Price Expectations.”
Review of Financial Studies
(November 17, 2023).