Publication
Political Attacks in 280 Characters or Less: A New Tool for the Automated Classification of Campaign Negativity on Social Media
Publisher:
SAGE Publications
Date:
17-12-2021
DOI:
10.1177/1532673X211055676
Abstract: Negativity in election c aign matters. To what extent can the content of social media posts provide a reliable indicator of candidates' c aign negativity? We introduce and critically assess an automated classification procedure that we trained to annotate more than 16,000 tweets of candidates competing in the 2018 Senate Midterms. The algorithm is able to identify the presence of political attacks (both in general, and specifically for character and policy attacks) and incivility. Due to the novel nature of the instrument, the article discusses the external and convergent validity of these measures. Results suggest that automated classifications are able to provide reliable measurements of c aign negativity. Triangulations with independent data show that our automatic classification is strongly associated with the experts’ perceptions of the candidates’ c aign. Furthermore, variations in our measures of negativity can be explained by theoretically relevant factors at the candidate and context levels (e.g., incumbency status and candidate gender) theoretically meaningful trends are also found when replicating the analysis using tweets for the 2020 Senate election, coded using the automated classifier developed for 2018. The implications of such results for the automated coding of c aign negativity in social media are discussed.