Abstract

Previous research investigating the transmission of political messaging has primarily taken a valence-based approach leaving it unclear how specific emotions influence the spread of candidates’ messages, particularly in a social media context. Moreover, such work does not examine if any differences exist across major political parties (i.e., Democrats vs. Republicans) in their responses to each type of emotional content. Leveraging more than 7000 original messages published by Senate candidates on Twitter leading up to the 2018 US mid-term elections, the present study utilizes an advanced natural language tool (i.e., IBM Tone Analyzer) to examine how candidates’ multidimensional discrete emotions (i.e., joy, anger, fear, sadness, and confidence) displayed in a given tweet—might be more likely to garner the public’s attention online. While the results indicate that positive joy-signaling tweets are less likely to be retweeted or favorited on both sides of the political spectrum, the presence of anger- and fear-signaling tweets were significantly associated with increased diffusion among Republican and Democrat networks, respectively. Neither expressions of confidence nor sadness had an impact on retweet or favorite counts. Given the ubiquity of social media in contemporary politics, here we provide a starting point from which to disentangle the role of specific emotions in the proliferation of political messages, shedding light on the ways in which political candidates gain potential exposure throughout the election cycle.

Highlights

  • Previous research investigating the transmission of political messaging has primarily taken a valence-based approach leaving it unclear how specific emotions influence the spread of candidates’ messages, in a social media context

  • Given the lowest value regarding both Akaike’s Information Criterion (AIC) and Schwartz’s Bayesian criterion (BIC), results indicate that the present model is significantly better at capturing the data than others using different combinations of random factor sets (e.g., Democrats: x2(1) = 205.1, p < 0.001; Republicans: x2(1) = 223.3, p < 0.001)

  • To measure whether the spread of online information was driven by a negativity bias, we examined the effect that each type of emotionally charged message had on the retweet and favorite counts of both the Democratic and Republican candidates

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Summary

Introduction

Previous research investigating the transmission of political messaging has primarily taken a valence-based approach leaving it unclear how specific emotions influence the spread of candidates’ messages, in a social media context. Leveraging more than 7000 original messages published by Senate candidates on Twitter leading up to the 2018 US midterm elections, the present study utilizes an advanced natural language tool (i.e., IBM Tone Analyzer) to examine how candidates’ multidimensional discrete emotions (i.e., joy, anger, fear, sadness, and confidence) displayed in a given tweet—might be more likely to garner the public’s attention online. Leveraging 7310 original Twitter messages from Senate candidates in the lead up to the 2018 US mid-term elections, we utilize an advanced natural language processing tool (i.e., IBM Tone Analyzer) to explore two important questions: (a) Are certain types of emotional content (i.e., joy, anger, fear, sadness and confidence) more likely to capture the public’s attention, thereby driving the spread of candidates’ messages (i.e., be directly retweeted or favorited) through social media networks?; and (b) if so, is this pattern similar or different across the political party divide (i.e., Democrats vs Republicans)?. As Brady and Crockett (2019) noted, since online communication tools are literally just a few keystrokes, a person’s threshold for responding to negativity is probably lower than in offline conversations, i.e., the individual directly involved is neither confronted with the same physical risks, nor do they risk the same reputational damage

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