Anomaly Detection through Enhanced Sentiment Analysis on Social Media Data

Zhaoxia Wang, Victor Joo Chuan Tong, Xin Xin, H. Chin
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引用次数: 34

Abstract

Anomaly detection in sentiment analysis refers to detecting abnormal opinions, sentiment patterns or special temporal aspects of such patterns in a collection of data. The anomalies detected may be due to sudden sentiment changes hidden in large amounts of text. If these anomalies are undetected or poorly managed, the consequences may be severe, e.g. A business whose customers reveal negative sentiments and will no longer support the establishment. Social media platforms, such as Twitter, provide a vast source of information, which includes user feedback, opinion and information on most issues. Many organizations also leverage social media platforms to publish information about events, products, services, policies and other topics frequently. Thus, analyzing social media data to identify abnormal events in a timely manner is a beneficial topic. It will enable the businesses and government organizations to intervene early or adopt proper strategies if needed. However, it is also a challenge due to the diversity and size of social media data. In this study, we survey existing anomaly analysis as well as sentiment analysis methods and analyze their limitations and challenges. To tackle the challenges, an enhanced sentiment classification method is proposed and discussed. We study the possibility of employing the proposed method to perform anomaly detection through sentiment analysis on social media data. We tested the applicability and robustness of the method through sentiment analysis on tweet data. The results demonstrate the capabilities of the proposed method and provide meaningful insights into this research area.
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基于增强情感分析的社交媒体数据异常检测
情感分析中的异常检测是指在数据集合中发现异常的观点、情感模式或这些模式的特殊时间方面。检测到的异常可能是由于隐藏在大量文本中的突然情绪变化。如果这些异常未被发现或管理不善,后果可能会很严重,例如,一个企业的客户表现出负面情绪,将不再支持该企业。Twitter等社交媒体平台提供了大量的信息来源,其中包括大多数问题的用户反馈、意见和信息。许多组织还经常利用社交媒体平台发布有关事件、产品、服务、政策和其他主题的信息。因此,分析社交媒体数据,及时发现异常事件是一个有益的课题。这将使企业和政府机构能够及早干预,或在必要时采取适当的战略。然而,由于社交媒体数据的多样性和规模,这也是一个挑战。在本研究中,我们回顾了现有的异常分析和情感分析方法,并分析了它们的局限性和挑战。为了解决这一问题,提出并讨论了一种增强的情感分类方法。我们研究了采用该方法通过对社交媒体数据的情感分析进行异常检测的可能性。通过对tweet数据的情感分析,验证了该方法的适用性和鲁棒性。结果证明了所提出的方法的能力,并为该研究领域提供了有意义的见解。
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