Diffusion of tax-related communication on social media

IF 1.6 3区 经济学 Q2 ECONOMICS
Žiga Puklavec , Olga Stavrova , Christoph Kogler , Marcel Zeelenberg
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引用次数: 0

Abstract

Taxation is a recurrent topic in people's conversations, also on social media. Yet, informal channels such as social media have been widely neglected in studies that examined how information about taxation spreads across social networks. Using posts on Twitter (currently called “X”) with taxation related hashtags from 2010 to 2020, we examined what linguistic cues are associated with information diffusion, that is, the number of retweets a message receives. The use of emotional, moral, and moral-emotional language in a tweet was associated with greater diffusion (i.e., more retweets). In contrast to the negativity bias literature, positive emotional words were more strongly associated with information diffusion than negative emotional words. Among the specific emotions that taxation research has focused on, only the use of anger (but not anxiety) words was associated with more retweets. The study contributes to the literature by examining individuals’ reasoning about taxes.

在社交媒体上传播税务相关信息
税收是人们经常谈论的话题,在社交媒体上也是如此。然而,在有关税收信息如何在社交网络中传播的研究中,社交媒体等非正式渠道却被广泛忽视。我们利用 2010 年至 2020 年期间 Twitter(目前称为 "X")上带有税收相关标签的帖子,研究了哪些语言线索与信息扩散(即一条信息获得的转发次数)有关。在推文中使用情感、道德和道德情感语言与更大的扩散(即更多的转发)有关。与消极偏差的研究结果相反,积极情绪语言比消极情绪语言与信息扩散的相关性更强。在税收研究关注的特定情绪中,只有使用愤怒(而不是焦虑)词语与更多的转发相关。本研究通过考察个人对税收的推理,为相关文献做出了贡献。
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来源期刊
CiteScore
2.60
自引率
12.50%
发文量
113
审稿时长
83 days
期刊介绍: The Journal of Behavioral and Experimental Economics (formerly the Journal of Socio-Economics) welcomes submissions that deal with various economic topics but also involve issues that are related to other social sciences, especially psychology, or use experimental methods of inquiry. Thus, contributions in behavioral economics, experimental economics, economic psychology, and judgment and decision making are especially welcome. The journal is open to different research methodologies, as long as they are relevant to the topic and employed rigorously. Possible methodologies include, for example, experiments, surveys, empirical work, theoretical models, meta-analyses, case studies, and simulation-based analyses. Literature reviews that integrate findings from many studies are also welcome, but they should synthesize the literature in a useful manner and provide substantial contribution beyond what the reader could get by simply reading the abstracts of the cited papers. In empirical work, it is important that the results are not only statistically significant but also economically significant. A high contribution-to-length ratio is expected from published articles and therefore papers should not be unnecessarily long, and short articles are welcome. Articles should be written in a manner that is intelligible to our generalist readership. Book reviews are generally solicited but occasionally unsolicited reviews will also be published. Contact the Book Review Editor for related inquiries.
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