“Can I write this is ableist AF in a peer review?”: A corpus-driven analysis of Twitter engagement strategies across disciplinary groups

Ibérica Pub Date : 2023-12-15 DOI:10.17398/2340-2784.46.207
Xiaoyu Xu, Jeroen Gevers, Luca Rossi
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Abstract

At a time when scholars are increasingly expected to participate in public knowledge dissemination, social media platforms like Twitter hold great promise for engaging both experts and non-experts. However, it remains unclear in what ways academic tweets are shaped by disciplinary concerns and how this might, in turn, impact audience engagement. Our paper reports an early-stage corpus-driven analysis of 4,000 English tweets from 40 scholars’ Twitter accounts across four disciplinary groups: Arts and Humanities (AH), Social Sciences (SS), Life Sciences (LS), and Physical Sciences (PS). Engagement rates (Tardy, 2023), multimodal elements, tweet types, and interaction markers were quantitatively calculated using corpus and computational methods and qualitatively analysed through close reading. Our findings revealed some disciplinary variation in the corpus: specifically, LS used more multimodal elements than SS on Twitter; SS used fewer interactional markers than LS and PS on Twitter. We further found that LS also has the highest number of threads and the longest threads, often to unfold their multimodal information. Despite being the least multimodal and interactive disciplinary group, SS has the highest engagement rate. Our analysis suggests that explicit evaluation and critique plays an important role in eliciting responses on Twitter, particularly with regard to current social or political issues —a finding that resonates with previous research on science communication and popularization (Orpin, 2019). The findings can be applied in science communication training to raise disciplinary awareness in shaping one’s social media presence.
"我能在同行评议中写上这是能力主义的 AF 吗?语料库驱动的跨学科群体推特参与策略分析
当人们越来越期待学者参与公共知识传播时,Twitter 等社交媒体平台在吸引专家和非专家参与方面大有可为。然而,学术推文在哪些方面受到学科关注的影响,以及这反过来又会如何影响受众的参与度,目前仍不清楚。我们的论文报告了对来自 40 个学者推特账户的 4000 条英文推文进行的早期语料库驱动分析,这些推文来自四个学科群:艺术与人文科学(AH)、社会科学(SS)、生命科学(LS)和物理科学(PS)。我们使用语料库和计算方法对参与率(Tardy,2023 年)、多模态元素、推文类型和互动标记进行了定量计算,并通过精读进行了定性分析。我们的发现揭示了语料库中的一些学科差异:具体而言,LS 在 Twitter 上使用的多模态元素多于 SS;SS 在 Twitter 上使用的互动标记少于 LS 和 PS。我们还发现,LS 的线程数最多,线程最长,通常是为了展开其多模态信息。尽管 SS 是多模态和互动最少的学科组,但其参与率却最高。我们的分析表明,明确的评价和批评在引发推特上的回应方面发挥着重要作用,尤其是在当前的社会或政治问题上--这一发现与之前的科学传播和普及研究产生了共鸣(Orpin, 2019)。这些发现可应用于科学传播培训,以提高塑造个人社交媒体形象的学科意识。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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