恶搞:推特上表情符号的使用模式

Mohammad Shiri, Oleksii Dubovyk, Golbarg Roghaniaraghi, S. Jayarathna
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引用次数: 0

摘要

在过去的几十年里,表情包在社交媒体上越来越受欢迎,它们不仅丰富了带有情感内涵的信息,而且为研究表情包对思想生存的影响提供了一个方便的系统。在这项工作中,我们将表情符号视为标准化的表情包,以测试它们的使用对社交媒体中成功的不同方面的影响。具体来说,我们从Twitter中提取随机的单个tweet,以构建每个tweet中使用的表情符号列表。有了这个数据集,我们的目标是解决三个不同的问题:(1)是否有特定的表情符号使用模式增加推文的受欢迎程度;(2)推特上表情符号的使用是否能很好地预测股市交易量;(3)是否存在与低质量推文(如垃圾邮件)相关的特定表情包子集。我们没有发现表情符号使用对推特受欢迎程度有积极影响的证据。然而,有理由认为负面表情可能会引发观众的强烈反应。对于一些公司,我们能够根据表情符号的使用情况准确预测股票走势。最后,很明显,在低质量的推文中使用了特定的表情符号子集。这项工作可以作为深入研究表情包系统的起点,因为这个话题在文献中似乎比较新鲜。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Meme it Up: Patterns of Emoji Usage on Twitter
As emojis have grown in their popularity in social media over the last decades, they not only enrich messaging with emotional connotations but offer a convenient system for studying the effects of memes on ideas’ survival. In this work, we treat emojis like standardized memes to test the impact of their usage on different facets of success within social media. Specifically, we extracted random individual tweets from Twitter to construct a list of emojis used within each tweet. With this dataset, we aimed to address three distinct questions: (1) whether there are specific patterns of emoji usage that increase tweet popularity; (2) whether emojis usage on tweeter can be a good predictor of the stock market trading volume; and (3) whether there is a specific subset of emojis associated with low-quality tweets (e.g., spam). We found no evidence of the positive effects of emoji usage on tweet popularity. However, there was a reason to claim that negative emojis may trigger an intensive response from the audience. For some companies, we were able to accurately predict stock patterns based on emoji usage. Finally, there clearly was a specific subset of emojis used in low-quality tweets. This work may serve as a starting point for a deep investigation of the emoji-meme system, as this topic seems to be relatively fresh in the literature.
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