Yayınlanmış 1 Ocak 2018 | Sürüm v1
Dergi makalesi Açık

Google Trends and the forecasting performance of exchange rate models

Oluşturanlar

  • 1. Valdosta State Univ, Harley Langdale Jr Coll Business Adm, Dept Econ & Finance, Valdosta, GA 31698 USA

Açıklama

In this paper, we use Google Trends data for exchange rate forecasting in the context of a broad literature review that ties the exchange rate movements with macroeconomic fundamentals. The sample covers 11 OECD countries' exchange rates for the period from January 2004 to June 2014. In out-of-sample forecasting of monthly returns on exchange rates, our findings indicate that the Google Trends search query data do a better job than the structural models in predicting the true direction of changes in nominal exchange rates. We also observed that Google Trends-based forecasts are better at picking up the direction of the changes in the monthly nominal exchange rates after the Great Recession era (2008-2009). Based on the Clark and West inference procedure of equal predictive accuracy testing, we found that the relative performance of Google Trends-based exchange rate predictions against the null of a random walk model is no worse than the purchasing power parity model. On the other hand, although the monetary model fundamentals could beat the random walk null only in one out of 11 currency pairs, with Google Trends predictors we found evidence of better performance for five currency pairs. We believe that these findings necessitate further research in this area to investigate the extravalue one can get from Google search query data.

Dosyalar

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