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Early Detection of Buzzwords Based on Large-scale Time-Series Analysis of Blog Entries

机译:基于博客条目的大规模时间序列分析的流行语的早期检测

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In this paper, we discuss a method for early detection of "gradual buzzwords" by analyzing time-series data of blog entries. We observe the process in which certain topics grow to become major buzzwords and determine the key indicators that are necessary for their early detection. From the analysis results based on 81.922.977 blog entries from 3,776,154 blog websites posted in the past two years, we find that as topics grow to become major buzzwords, the percentages of blog entries from the blogger communities closely related to the target buzzword decrease gradually, and the percentages of blog entries from the weakly related blogger communities increase gradually. We then describe a method for early detection of these buzzwords, which is dependent on identifying the blogger communities which are closely related to these buzzwords. Moreover, we verify the effectiveness of the proposed method through experimentation that compares the rankings of several buzzword candidates with a real-life idol group popularity competition.
机译:在本文中,我们讨论了一种通过分析博客条目的时间序列数据来早期检测“渐进式流行词”的方法。我们观察到某些主题逐渐成为流行语的过程,并确定了对其进行早期检测所必需的关键指标。根据过去两年中来自3,776,154个博客网站的81.922.977个博客条目的分析结果,我们发现,随着主题逐渐成为主要流行词,与目标流行语密切相关的博客社区中博客条目的百分比逐渐降低,而来自相关性较弱的博客社区的博客条目的百分比逐渐增加。然后,我们描述了一种用于早期检测这些流行词的方法,该方法取决于识别与这些流行词密切相关的博客社区。此外,我们通过实验比较了几个流行语候选者的排名与现实生活中的偶像团体受欢迎程度竞争,从而验证了该方法的有效性。

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