TY - JOUR AB - Purpose The purpose of this paper is to analyze the effect of investor sentiment, measured with Google internet search data, on volatility forecasts of the US REIT market.Design/methodology/approach The author uses the S&P US REIT index and collects search volume data from Google Trends for all US REIT. Two different Generalized Autoregressive Conditional Heteroskedastic models are then estimated, namely, the baseline model and the Google augmented model. Using these models, one-step-ahead forecasts are conducted and the forecast accuracies of both models are subsequently compared.Findings The empirical results reveal that search volume data can be used to predict volatility on the REIT market. Especially in periods of high volatility, Google augmented models outperform the baseline model.Practical implications The results imply that Google data can be used on the REIT market as a market indicator. Investors could use Google as an early warning system, especially in periods of high volatility.Originality/value This is the first paper to use Google search query data for volatility forecasts of the REIT market. VL - 34 IS - 3 SN - 1463-578X DO - 10.1108/JPIF-12-2015-0083 UR - https://doi.org/10.1108/JPIF-12-2015-0083 AU - Braun Nicole PY - 2016 Y1 - 2016/01/01 TI - Google search volume sentiment and its impact on REIT market movements T2 - Journal of Property Investment & Finance PB - Emerald Group Publishing Limited SP - 249 EP - 262 Y2 - 2024/09/23 ER -