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Paper #1769

Títol:
Politician-citizen interactions and dynamic representation: Evidence from Twitter
Autors:
Aina Gallego, Nikolas Schöll i Gaël Le Mens
Data:
Gener 2021
Resum:
We study how politicians learn about public opinion through their regular interactions with citizens and how they respond to perceived changes. We model this process within a reinforcement learning framework: politicians talk about different policy issues, listen to feedback, and increase attention to better received issues. Because politicians are exposed to different feedback depending on their social identities, being responsive leads to divergence in issue attention over time. We apply these ideas to study the rise of gender issues. We collected 1.5 million tweets written by Spanish MPs, classified them using a deep learning algorithm, and measured feedback using retweets and likes. We find that politicians are responsive to feedback and that female politicians receive relatively more positive feedback for writing on gender issues. An analysis of mechanisms sheds light on why this happens. In the conclusion, we discuss how reinforcement learning can create unequal responsiveness, misperceptions, and polarization.
Paraules clau:
political responsiveness, representation, social media, gender
Àrea de Recerca:
Economia Política
Publicat a:
American Journal of Political Science, 2023, DOI: https://doi.org/10.1111/ajps.12772
Amb el títol:
How Politicians Learn from Citizens’ Feedback: The Case of Gender on Twitter

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