Count time series obtained from online social media data, such as Twitter, have drawn increasing interest among academics and market analysts over the past decade. Transforming Web activity records into counts yields time series with peculiar features, including the coexistence of smooth paths and sudden jumps, as well as cross-sectional and temporal dependence. Using Twitter posts about country risks for the United Kingdom and the United States, this paper proposes an innovative state space model for multivariate count data with jumps. We use the proposed model to assess the impact of public concerns in these countries on market systems. To do so, public concerns inferred from Twitter data are unpacked into country-specific persistent terms, risk social amplification events and co-movements of the country series. The identified components are then used to investigate the existence and magnitude of country-risk spillovers and social amplification effects on the volatility of financial markets.

Filtering the intensity of public concern from social media count data with jumps / Iacopini, Matteo; Santagiustina, Carlo R. M. A.. - In: JOURNAL OF THE ROYAL STATISTICAL SOCIETY. SERIES A. STATISTICS IN SOCIETY. - ISSN 0964-1998. - Data Science for Society: Challenges, Developments and Applications:(2021), pp. 1283-1302. [10.1111/rssa.12704]

Filtering the intensity of public concern from social media count data with jumps

Iacopini, Matteo
;
2021

Abstract

Count time series obtained from online social media data, such as Twitter, have drawn increasing interest among academics and market analysts over the past decade. Transforming Web activity records into counts yields time series with peculiar features, including the coexistence of smooth paths and sudden jumps, as well as cross-sectional and temporal dependence. Using Twitter posts about country risks for the United Kingdom and the United States, this paper proposes an innovative state space model for multivariate count data with jumps. We use the proposed model to assess the impact of public concerns in these countries on market systems. To do so, public concerns inferred from Twitter data are unpacked into country-specific persistent terms, risk social amplification events and co-movements of the country series. The identified components are then used to investigate the existence and magnitude of country-risk spillovers and social amplification effects on the volatility of financial markets.
2021
bayesian inference
count time series
jumps
online social media
particle filtering
risk perception
Filtering the intensity of public concern from social media count data with jumps / Iacopini, Matteo; Santagiustina, Carlo R. M. A.. - In: JOURNAL OF THE ROYAL STATISTICAL SOCIETY. SERIES A. STATISTICS IN SOCIETY. - ISSN 0964-1998. - Data Science for Society: Challenges, Developments and Applications:(2021), pp. 1283-1302. [10.1111/rssa.12704]
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11385/242481
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