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Event Detection from Social Data Stream Based on Time-Frequency Analysis

机译:基于时频分析的社交数据流事件检测

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Social data have been emerged as a special big data resource of rich information, which is raw materials for diverse research to analyse a complex relationship network of users and huge amount of daily exchanged data packages on Social Network Services (SNS). The popularity of current SNS in human life opens a good challenge to discover meaningful knowledge from senseless data patterns. It is an important task in academic and business fields to understand user's behaviour, hobbies and viewpoints, but difficult research issue especially on a large volume of data. In this paper, we propose a method to extract real-world events from Social Data Stream using an approach in time-frequency domain to take advantage of digital processing methods. Consequently, this work is expected to significantly reduce the complexity of the social data and to improve the performance of event detection on big data resource.
机译:社会数据已经成为一种具有丰富信息的特殊大数据资源,它是进行各种研究以分析用户的复杂关系网络和社交网络服务(SNS)上每日交换的大量数据包的原材料。当前的SNS在人类生活中的普及为从无意义的数据模式中发现有意义的知识提出了一个很好的挑战。理解用户的行为,爱好和观点是学术和商业领域的一项重要任务,但特别是在海量数据上,这是一个棘手的研究问题。在本文中,我们提出了一种利用时频域中的方法从社交数据流中提取现实事件的方法,以利用数字处理方法的优势。因此,这项工作有望显着降低社交数据的复杂性,并提高大数据资源上事件检测的性能。

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