What to post? Understanding engagement cultivation in microblogging with big data-driven theory building

IF 20.1 1区 管理学 Q1 INFORMATION SCIENCE & LIBRARY SCIENCE
Yixin Zhang , Catherine Ridings , Alexander Semenov
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引用次数: 4

Abstract

This paper examines how alternative food networks (AFNs) cultivate engagement on a social media platform. Using the method proposed in Kar and Dwivedi (2020) and Berente et al. (2019), we contribute to theory through combining exploratory text analysis with model testing. Using the theoretical lens of relationship cultivation and social media engagement, we collected 55,358 original Weibo posts by 90 farms and other AFN participants in China and used Latent Dirichlet Allocation (LDA) modeling for topic analysis. We then used the literature to map the topics with constructs and developed a theoretical model. To validate the theoretical model, a panel dataset was constructed on Weibo account and year level, with Chinese city-level yearly economic data included as control variables. A fixed effects panel data regression analysis was performed. The empirical results revealed that posts centered on openness/disclosure, sharing of tasks, and knowledge sharing result in positive levels of social media engagement. Posting about irrelevant information and advertising that uses repetitive wording in multiple posts had negative effects on engagement. Our findings suggest that cultivating engagement requires different relationship strategies, and social media platforms should be leveraged according to the context and the purpose of the social cause. Our research is also among the early studies that use both big data analysis of large quantities of textual data and model validation for theoretical insights.

发布什么?用大数据驱动的理论构建理解微博的用户粘性培养
本文研究了替代食品网络(afn)如何在社交媒体平台上培养参与。使用Kar和Dwivedi(2020)以及Berente等人(2019)提出的方法,我们将探索性文本分析与模型测试相结合,为理论做出贡献。利用关系培养和社交媒体参与的理论视角,我们收集了中国90个农场和其他AFN参与者的55,358条原始微博,并使用潜在狄利克雷分配(Latent Dirichlet Allocation, LDA)模型进行主题分析。然后,我们使用文献来映射主题与结构,并开发了一个理论模型。为了验证理论模型,以中国城市级年度经济数据为控制变量,在微博账户和年份层面构建面板数据集。采用固定效应面板数据回归分析。实证结果显示,以开放/披露、任务共享和知识共享为中心的帖子会提高社交媒体参与度。发布不相关的信息和在多个帖子中使用重复措辞的广告会对用户粘性产生负面影响。我们的研究结果表明,培养参与需要不同的关系策略,并且应该根据社会事业的背景和目的来利用社交媒体平台。我们的研究也是使用大数据分析大量文本数据和模型验证理论见解的早期研究之一。
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
International Journal of Information Management
International Journal of Information Management INFORMATION SCIENCE & LIBRARY SCIENCE-
CiteScore
53.10
自引率
6.20%
发文量
111
审稿时长
24 days
期刊介绍: The International Journal of Information Management (IJIM) is a distinguished, international, and peer-reviewed journal dedicated to providing its readers with top-notch analysis and discussions within the evolving field of information management. Key features of the journal include: Comprehensive Coverage: IJIM keeps readers informed with major papers, reports, and reviews. Topical Relevance: The journal remains current and relevant through Viewpoint articles and regular features like Research Notes, Case Studies, and a Reviews section, ensuring readers are updated on contemporary issues. Focus on Quality: IJIM prioritizes high-quality papers that address contemporary issues in information management.
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