解密加密推特

ArXiv Pub Date : 2024-03-09 DOI:10.1145/3614419.3644026
In-Soon Kang, Maruf Ahmed Mridul, Abraham Sanders, Yao Ma, Thilanka Munasinghe, Aparna Gupta, O. Seneviratne
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引用次数: 0

摘要

加密货币是一个快速发展的领域,每年都有大量新项目不断涌现。然而,该领域越来越多的事件,如黑客攻击和安全漏洞,威胁着社区的发展和技术的进步。Crypto Twitter 是投资者、爱好者和怀疑论者汇聚的重要数字领域,通过社交媒体互动揭示实时情绪和趋势。我们对加密货币格局形成时期收集的 Twitter 数据集进行了分析。我们收集了 4000 万条使用加密货币相关关键词的推文,并进行了细致入微的分析,包括按语义相似性对推文进行分组,以及构建推文和用户网络。我们使用句子级嵌入和自动编码器来创建推文的 K-means 聚类,并确定了六组推文及其主题,以研究与加密货币相关的不同兴趣和随时间推移的情绪变化。此外,我们还发现了指向加密世界真实事件的情绪指标,例如 2022 年 11 月的 FTX 事件。我们还通过考虑回复和引用关系,构建并分析了数据集中推文和用户的不同网络,并分析了每个网络中最大的组成部分。我们的网络揭示了 Crypto Twitter 中的僵尸活动结构,并表明可以使用基于网络的方法检测和处理僵尸活动。我们的工作揭示了社交媒体信号在检测和理解加密货币事件方面的潜力,使投资者、监管者和好奇的观察者都能从中受益,同时也揭示了使用基于网络的方法在加密货币推特中进行僵尸检测的潜力。
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Deciphering Crypto Twitter
Cryptocurrency is a fast-moving space, with a continuous influx of new projects every year. However, an increasing number of incidents in the space, such as hacks and security breaches, threaten the growth of the community and the development of technology. This dynamic and often tumultuous landscape is vividly mirrored and shaped by discussions within Crypto Twitter, a key digital arena where investors, enthusiasts, and skeptics converge, revealing real-time sentiments and trends through social media interactions. We present our analysis on a Twitter dataset collected during a formative period of the cryptocurrency landscape. We collected 40 million tweets using cryptocurrency-related keywords and performed a nuanced analysis that involved grouping the tweets by semantic similarity and constructing a tweet and user network. We used sentence-level embeddings and autoencoders to create K-means clusters of tweets and identified six groups of tweets and their topics to examine different cryptocurrency-related interests and the change in sentiment over time. Moreover, we discovered sentiment indicators that point to real-life incidents in the crypto world, such as the FTX incident of November 2022. We also constructed and analyzed different networks of tweets and users in our dataset by considering the reply and quote relationships and analyzed the largest components of each network. Our networks reveal a structure of bot activity in Crypto Twitter and suggest that they can be detected and handled using a network-based approach. Our work sheds light on the potential of social media signals to detect and understand crypto events, benefiting investors, regulators, and curious observers alike, as well as the potential for bot detection in Crypto Twitter using a network-based approach.
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