Over the last decade, the erosion of trust in public institutions and traditional media sources have been proceeding in parallel. As recent developments in media consumption have led to a proliferation of politically charged online misinformation, it is no wonder that many have been questioning whether the spread of fake news has affected the results of recent elections, contributing to the growth of populist party platforms. In this work, we aim to quantify this impact by focusing on the causal effect of the spread of misinformation over electoral outcomes in the 2018 Italian General elections. We exploit the presence of Italian and German linguistic groups in the Trento and Bolzano/Bozen autonomous provinces as an exogenous source of variation, assigning individuals into distinct filter bubbles each differently exposed to misinformation. To do so, we introduce a novel index based on text mining techniques to measure populism. Using this approach, we analyse the social media content of each party and their leaders over the course of the electoral campaign for the 2013 and 2018 elections. We then collect electoral and socio-demographic data from the region and, after constructing a proxy for exposition to misinformation, we measure the change in populist vote across the two groups in-between the two general elections, using a combination of difference-in-difference and two-stageleast-squares inference methods. Our results indicate that misinformation had a negligible and non-significant effect on populist vote in Trentino and South Tyrol during the Italian 2018 general elections.

Cantarella, M., N., Fraccaroli e R., Volpe. "Does fake news affect voting behaviour?" Working paper, DEMB WORKING PAPER SERIES, Dipartimento di Economia Marco Biagi - Università di Modena e Reggio Emilia, 2019. https://doi.org/10.25431/11380_1196186

Does fake news affect voting behaviour?

Cantarella, M.;
2019

Abstract

Over the last decade, the erosion of trust in public institutions and traditional media sources have been proceeding in parallel. As recent developments in media consumption have led to a proliferation of politically charged online misinformation, it is no wonder that many have been questioning whether the spread of fake news has affected the results of recent elections, contributing to the growth of populist party platforms. In this work, we aim to quantify this impact by focusing on the causal effect of the spread of misinformation over electoral outcomes in the 2018 Italian General elections. We exploit the presence of Italian and German linguistic groups in the Trento and Bolzano/Bozen autonomous provinces as an exogenous source of variation, assigning individuals into distinct filter bubbles each differently exposed to misinformation. To do so, we introduce a novel index based on text mining techniques to measure populism. Using this approach, we analyse the social media content of each party and their leaders over the course of the electoral campaign for the 2013 and 2018 elections. We then collect electoral and socio-demographic data from the region and, after constructing a proxy for exposition to misinformation, we measure the change in populist vote across the two groups in-between the two general elections, using a combination of difference-in-difference and two-stageleast-squares inference methods. Our results indicate that misinformation had a negligible and non-significant effect on populist vote in Trentino and South Tyrol during the Italian 2018 general elections.
2019
Giugno
Cantarella, M.; Fraccaroli, N.; Volpe, R.
Cantarella, M., N., Fraccaroli e R., Volpe. "Does fake news affect voting behaviour?" Working paper, DEMB WORKING PAPER SERIES, Dipartimento di Economia Marco Biagi - Università di Modena e Reggio Emilia, 2019. https://doi.org/10.25431/11380_1196186
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Utilizza questo identificativo per citare o creare un link a questo documento: https://hdl.handle.net/11380/1196186
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