This paper aims to assess whether Google search data is useful when predicting the US unemployment rate among other more traditional predictor variables. A weekly Google index is derived from the keyword “unemployment” and is used in diffusion index variants along with the weekly number of initial claims and monthly estimated latent factors. The unemployment rate forecasts are generated using MIDAS regression models that take into account the actual frequencies of the predictor variables. The forecasts are made in real-time and the forecasts of the best forecasting models exceed, for the most part, the root mean squared forecast error of two benchmarks. However, as the forecasting horizon increases, the forecasting performance of th...
The current economic crisis requires fast information to predict economic behavior early, which is d...
What would you search for if you thought you might lose your job? Typical searches might be queries ...
Scott and Varian (2014) present a Bayesian structural time series method for short-term forecasting ...
This paper aims to assess whether Google search data is useful when predicting the US unemployment ...
We suggest the use of an Internet job-search indicator (the Google Index, GI) as the best leading in...
This article tests the power of a novel indicator based on job search related web queries in predict...
This European study presents an innovative approach to short-term forecasts of unemployment using da...
Treballs Finals del Màster d'Economia, Facultat d'Economia i Empresa, Universitat de Barcelona, Curs...
We suggest the use of an Internet job-search indicator (the Google Index, GI) as the best leading in...
In this thesis, the usefulness of search engine data to nowcast the unemployment rate of Sweden is e...
This thesis explores whether online search queries, represented by Google search queries, contain in...
We make use of Google search data in an attempt to predict unemployment, CPI and consumer confidence...
International audienceAccording to the growing “Google econometrics” literature, Google queries may ...
By the use of econometric techniques, this paper extends the application of predictive methods for u...
With search engines gaining traction for job seekers, Internet searches have become a viable data so...
The current economic crisis requires fast information to predict economic behavior early, which is d...
What would you search for if you thought you might lose your job? Typical searches might be queries ...
Scott and Varian (2014) present a Bayesian structural time series method for short-term forecasting ...
This paper aims to assess whether Google search data is useful when predicting the US unemployment ...
We suggest the use of an Internet job-search indicator (the Google Index, GI) as the best leading in...
This article tests the power of a novel indicator based on job search related web queries in predict...
This European study presents an innovative approach to short-term forecasts of unemployment using da...
Treballs Finals del Màster d'Economia, Facultat d'Economia i Empresa, Universitat de Barcelona, Curs...
We suggest the use of an Internet job-search indicator (the Google Index, GI) as the best leading in...
In this thesis, the usefulness of search engine data to nowcast the unemployment rate of Sweden is e...
This thesis explores whether online search queries, represented by Google search queries, contain in...
We make use of Google search data in an attempt to predict unemployment, CPI and consumer confidence...
International audienceAccording to the growing “Google econometrics” literature, Google queries may ...
By the use of econometric techniques, this paper extends the application of predictive methods for u...
With search engines gaining traction for job seekers, Internet searches have become a viable data so...
The current economic crisis requires fast information to predict economic behavior early, which is d...
What would you search for if you thought you might lose your job? Typical searches might be queries ...
Scott and Varian (2014) present a Bayesian structural time series method for short-term forecasting ...