A role for qualitative methods in researching Twitter data on a popular science article's communication.

Frontiers in research metrics and analytics Pub Date : 2025-01-07 eCollection Date: 2024-01-01 DOI:10.3389/frma.2024.1431298
Travis Noakes, Corrie Susanna Uys, Patricia Ann Harpur, Izak van Zyl
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Abstract

Big Data communication researchers have highlighted the need for qualitative analysis of online science conversations to better understand their meaning. However, a scholarly gap exists in exploring how qualitative methods can be applied to small data regarding micro-bloggers' communications about science articles. While social media attention assists with article dissemination, qualitative research into the associated microblogging practices remains limited. To address these gaps, this study explores how qualitative analysis can enhance science communication studies on microblogging articles. Calls for such qualitative approaches are supported by a practical example: an interdisciplinary team applied mixed methods to better understand the promotion of an unorthodox but popular science article on Twitter over a 2-year period. While Big Data studies typically identify patterns in microbloggers' activities from large data sets, this study demonstrates the value of integrating qualitative analysis to deepen understanding of these interactions. In this study, a small data set was analyzed using NVivo™ by a pragmatist and MAXQDA™ by a statistician. The pragmatist's multimodal content analysis found that health professionals shared links to the article, with its popularity tied to its role as a communication event within a longstanding debate in the health sciences. Dissident professionals used this article to support an emergent paradigm. The analysis also uncovered practices, such as language localization, where a title was translated from English to Spanish to reach broader audiences. A semantic network analysis confirmed that terms used by the article's tweeters strongly aligned with its content, and the discussion was notably pro-social. Meta-inferences were then drawn by integrating the findings from the two methods. These flagged the significance of contextualizing the sharing of a health science article in relation to tweeters' professional identities and their stances on health-related issues. In addition, meta-critiques highlighted challenges in preparing accurate tweet data and analyzing them using qualitative data analysis software. These findings highlight the valuable contributions that qualitative research can make to research involving microblogging data in science communication. Future research could critique this approach or further explore the microblogging of key articles within important scientific debates.

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定性方法在研究Twitter数据对科普文章传播的影响中的作用。
大数据传播研究人员强调了对在线科学对话进行定性分析以更好地理解其含义的必要性。然而,在探索如何将定性方法应用于微博作者关于科学文章传播的小数据方面,存在学术空白。虽然社交媒体关注有助于文章传播,但对相关微博实践的定性研究仍然有限。为了弥补这些不足,本研究探讨了如何通过定性分析来加强对微博文章的科学传播研究。对这种定性方法的呼吁得到了一个实际例子的支持:一个跨学科团队应用混合方法来更好地理解推特上一篇非正统但流行的科学文章在两年期间的推广。虽然大数据研究通常是从大数据集中识别微博用户的活动模式,但本研究展示了整合定性分析以加深对这些互动的理解的价值。在这项研究中,一名实用主义者使用NVivo™和一名统计学家使用MAXQDA™分析了一个小数据集。实用主义者的多模式内容分析发现,卫生专业人员分享了这篇文章的链接,这篇文章的受欢迎程度与它在卫生科学长期争论中作为交流事件的作用有关。持不同意见的专业人士用这篇文章来支持一个新兴的范式。分析还揭示了一些做法,如语言本地化,将游戏从英语翻译成西班牙语,以吸引更广泛的受众。语义网络分析证实,这篇文章的推特用户使用的术语与文章内容高度一致,而且讨论明显是亲社会的。然后通过整合两种方法的结果得出元推论。这些研究表明,将健康科学文章的分享与推特用户的职业身份和他们在健康相关问题上的立场联系起来,具有重要意义。此外,元批评强调了在准备准确的推特数据和使用定性数据分析软件分析它们方面的挑战。这些发现突出了定性研究对科学传播中微博数据研究的重要贡献。未来的研究可能会批评这种方法,或者进一步探索重要科学辩论中关键文章的微博。
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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来源期刊
CiteScore
3.50
自引率
0.00%
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0
审稿时长
14 weeks
期刊最新文献
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