From Micro to Macro: Essays in Textual Analysis
Advisor: Marcelo Medeiros
Examiners: Eduardo Zilberman, Marcelo Fernandes.This study exploits non-conventional data sources such as newspaper textual data and internet searches from Google Trends in two empirical problems: (i) analysing the impacts of mobility on cases and deaths due to Covid-19; (ii) nowcasting GDP in high-frequency. The first paper resorts to unstructured data to control for non-observable behavioural effects and finds that an increase in residential mobility significantly reduces Covid-19 cases and deaths over a 4-week horizon. The second paper uses unstructured data sources to nowcast GDP on a weekly basis, showing that textual data and Google Trends can significantly enhance the quality of nowcasts (measured by MSE, MAE and other metrics) compared to Focus’s market expectations as a benchmark. In both cases, unstructured data was revealed to be a valuable source of information not encoded in structured indicators.
See also
Monetary Policy and Housing in HANK
09/05/2025
Marcos Kiehl Sonnervig
A stochastic simulation/calibration of the cash flows between FAT and BNDES Better understanding the cash flow projections for the fund
05/05/2025
Tiago Cytryn Collett Solberg
Domestic and External Shocks in the Brazilian Business Cycle
28/04/2025
Yvan Becard