聚合用户在线意见属性和新闻影响力的加密货币声誉生成

Achraf Boumhidi, Abdessamad Benlahbib, E. Nfaoui
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引用次数: 0

摘要

声誉生成系统是用于不同领域的决策工具,包括电子商务、旅游、社交媒体事件等。这样的系统通过分析和挖掘大量不同类型的用户数据,包括文本观点、社交互动、共享图像等,生成一个数字声誉评分。在过去的几年里,用户已经分享了数百万条与加密货币相关的推文。然而,文献中没有一个系统被设计来处理这个领域的独特特征,以自动生成声誉和支持投资者和用户的决策。因此,我们提出了第一个以财务为导向的声誉系统,该系统可以从Twitter上的用户生成内容到加密货币生成单个数值。该系统采用基于微调自回归语言模型XLNet的情感极性提取器对文本观点进行处理。此外,该系统还提出了一种通过检查文本内容、图像和表情符号之间的情感对比来检测讽刺观点的技术,以增强情感识别。此外,还考虑了其他特征,例如基于社交网络交互(点赞和分享)的观点的受欢迎程度,观点内实体需求的强度以及新闻对实体的影响。一项调查实验收集了827名对加密货币感兴趣的推特用户的数字分数。每个选定的用户为三种加密货币分配3个数字评估分数。这些分数的平均值被认为是基本事实。实验结果表明,与真实值相比,该模型能够有效地生成可靠的数值信誉值,证明该系统可以作为可信的决策工具在实践中应用。
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Aggregating Users' Online Opinions Attributes and News Influence for Cryptocurrencies Reputation Generation
Reputation generation systems are decision-making tools used in different domains including e-commerce, tourism, social media events, etc. Such systems generate a numerical reputation score by analyzing and mining massive amounts of various types of user data, including textual opinions, social interactions, shared images, etc. Over the past few years, users have been sharing millions of tweets related to cryptocurrencies. Yet, no system in the literature was designed to handle the unique features of this domain with the goal of automatically generating reputation and supporting investors’ and users’ decision-making. Therefore, we propose the first financially oriented reputation system that generates a single numerical value from user-generated content on Twitter toward cryptocurrencies. The system processes the textual opinions by applying a sentiment polarity extractor based on the fine-tuned auto-regressive language model named XLNet. Also, the system proposes a technique to enhance sentiment identification by detecting sarcastic opinions through examining the contrast of sentiment between the textual content, images, and emojis. Furthermore, other features are considered, such as the popularity of the opinions based on the social network interactions (likes and shares), the intensity of the entity’s demand within the opinions, and news influence on the entity. A survey experiment has been conducted by gathering numerical scores from 827 Twitter users interested in cryptocurrencies. Each selected user assigns 3 numerical assessment scores toward three cryptocurrencies. The average of those scores is considered ground truth. The experiment results show the efficacy of our model in generating a reliable numerical reputation value compared with the ground truth, which proves that the proposed system may be applied in practice as a trusted decision-making tool.
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