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Anger Breeds Controversy: Analyzing Controversy and Emotions on Reddit

2022-12-01 07:57:54
Kai Chen, Zihao He, Rong-Ching Chang, Jonathan May, Kristina Lerman

Abstract

Emotions play an important role in interpersonal interactions and social conflict, yet their function in the development of controversy and disagreement in online conversations has not been explored. To address this gap, we study controversy on Reddit, a popular network of online discussion forums. We collect discussions from a wide variety of topical forums and use emotion detection to recognize a range of emotions from text, including anger, fear, joy, admiration, etc. Our study has three main findings. First, controversial comments express more anger and less admiration, joy and optimism than non-controversial comments. Second, controversial comments affect emotions of downstream comments in a discussion, usually resulting in long-term increase in anger and a decrease in positive emotions, although the magnitude and direction of emotional change depends on the forum. Finally, we show that emotions help better predict which comments will become controversial. Understanding emotional dynamics of online discussions can help communities to better manage conversations.

Abstract (translated)

URL

https://arxiv.org/abs/2212.00339

PDF

https://arxiv.org/pdf/2212.00339.pdf


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