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首页> 外文期刊>International Journal of Computational Science and Engineering >Topic transition detection about the East Japan great earthquake based on emerging modularity over time
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Topic transition detection about the East Japan great earthquake based on emerging modularity over time

机译:基于随时间推移出现的模块化的东日本大地震的主题转换检测

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Social media, in which individual users post their opinions and gradually build their consensus, is recognised as one of pervasive collaboration. Tracking topic transitions over time on a social media provides a rich insight into exploring its social context. This paper proposes a novel approach using a modularity measure which shows the quality of a division of a network into modules, for topic transition detection. In this method, first, significant topical terms are extracted from messages in social media. Next, a snapshot cooccurrence network is constructed at each time stamp. Then, hierarchical topic structures for each snapshot network are organised by a modularity measure. Words' similarities are considered by cosine similarity, and topic similarities are calculated using Jaccard coefficient. An experiment was conducted for messages related to the East Japan great earthquake in a buzz marketing site, and the effectiveness of our proposed method was shown.
机译:各个用户发表自己的观点并逐步建立共识的社交媒体被认为是一种普遍的协作。在社交媒体上跟踪主题随时间的变化,可以深入了解其社交环境。本文提出了一种使用模块化度量的新颖方法,该方法显示了将网络划分为模块的质量,用于主题转换检测。在这种方法中,首先,从社交媒体中的消息中提取重要的主题词。接下来,在每个时间戳上构建快照共现网络。然后,通过模块化度量来组织每个快照网络的分层主题结构。通过余弦相似度来考虑单词的相似度,并使用雅克卡德系数来计算主题相似度。在嗡嗡声营销站点上进行了与东日本大地震有关的消息的实验,结果证明了我们提出的方法的有效性。

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