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Repurposing Sentiment Analysis for Social Research Scopes: An Inquiry into Emotion Expression Within Affective Publics on Twitter During the Covid-19 Emergency

机译:社会研究范围对情感表达的重新调整 - 在Covid-19紧急情况下对情感公众情感表达的探讨

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The scope of the article is to discuss and propose some methodological strategies to repurpose sentiment analysis for social research scopes. We argue that sentiment analysis is well suited to study an important topic in digital sociology: affective publics. Specifically, sentiment analysis reveals useful to explore two key components of affective publics: a) structure (emergence of dominant emotions); b) dynamics (transformation of affectivity into emotions). To do that we suggest combining sentiment analysis with emotion detection, text analysis and social media engagement metrics - which help to better understand the semantic and social context in which the sentiment related to a specific issue is situated. To illustrate our methodological point, we draw on the analysis of 33,338 tweets containing two hashtags - #NHSHeroes and #Covidiot - emerged in response to the global pandemic caused by Covid-19. Drawing on the analysis of the two affective publics aggregating around #NHSHeroes and #Covidiot, we conclude that they reflect a blend of emotions. In some cases, such generic flow of affect coalesces into a dominant emotion while it may not necessarily occur in other instances. Affective publics structured around positive emotions and local issues tend to be more consistent and cohesive than those based on general issues and negative emotions. Although negative emotions might attract the attention of digital publics, positively framed messages engage users more.
机译:本文的范围是讨论并提出一些方法论战略,以便将社会研究范围的情绪分析重新培训。我们认为,情绪分析非常适合研究数字社会学的重要课题:情感公众。具体而言,情绪分析揭示了探索情感公众的两个关键部件:a)结构(占主导地情绪的出现); b)动态(情感转化为情绪)。为此,我们建议将情感分析与情感检测,文本分析和社交媒体参与度量相结合 - 这有助于更好地了解与特定问题相关的情绪的语义和社会环境。为了说明我们的方法,我们借鉴了含有两个Hashtags的33,338次推文 - #nhsheroes和#covidiot - 以Covid-19引起的全球大流行产生了出现。绘制在#nhsheroes和#covidiot周围两种情感公众分析的分析,我们得出结论,他们反映了情绪的混合。在某些情况下,这种影响的泛型流动将合并成主导情绪,而在其他情况下可能不一定会发生。情感公众在积极情绪和当地问题上构建的结构化往往比基于一般问题和负面情绪更加一致和凝聚力。虽然负面情绪可能会引起数字公众的关注,但积极的框架消息会更多地吸引用户。

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