How politicians learn from citizens' feedback: the case of gender on Twitter
How politicians learn from citizens' feedback: the case of gender on Twitter
Citació
- Schöll N, Gallego A, Le Mens G. How politicians learn from citizens' feedback: the case of gender on Twitter. Am J Pol Sci. 2024 Apr;68(2):557-74. DOI: 10.1111/ajps.12772
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This article studies how politicians react to feedback from citizens on social media. We use a reinforcement-learning framework to model how politicians respond to citizens’ positive feedback by increasing attention to better received issues and allow feedback to vary depending on politicians’ gender. To test the model, we collect 1.5 million tweets published by Spanish MPs over 3 years, identify gender-issue tweets using a deep-learning algorithm (BERT) and measure feedback using retweets and likes. We find that citizens provide more positive feedback to female politicians for writing about gender, and that this contributes to their specialization in gender issues. The analysis of mechanisms suggests that female politicians receive more positive feedback because they are treated differently by citizens. To conclude, we discuss implications for representation, misperceptions, and polarization.Descripció
Includes supplementary materials: online appendix; replication file.