Discovering Topic Transition about the East Japan Great Earthquake in Dynamic Social Media

T. Hashimoto, T. Kuboyama, B. Chakraborty, Y. Shirota
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引用次数: 9

Abstract

Once a disaster occurs, people discuss various topics in social media such as electronic bulletin boards, SNSs and video services, and their decision-making tends to be affected by discussions in social media. Under the circumstance, a mechanism to detect topics in social media has become important. This paper targets the East Japan Great Earthquake, and proposes a time series topic transition discovering method in social media. Our proposed method adopts directed graphs to show topic structures in social media, and then form clusters using modularity measure which expresses the quality of a division of a network into modules or communities. The method computes topic transition using the Matthews correlation coefficient which is a measure of the quality of two binary classifications, and analyzes them over time. An experimental result using actual social media data about the East Japan Great Earthquake is shown as well.
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动态社交媒体中关于东日本大地震的话题转换
一旦灾难发生,人们会在电子公告板、社交网络、视频服务等社交媒体上讨论各种话题,人们的决策往往会受到社交媒体讨论的影响。在这种情况下,社交媒体中的话题检测机制变得非常重要。本文以东日本大地震为研究对象,提出了一种基于社交媒体的时间序列话题转移发现方法。我们提出的方法采用有向图来表示社交媒体中的主题结构,然后使用模块化度量来表示网络划分为模块或社区的质量,从而形成聚类。该方法使用马修斯相关系数计算主题转移,马修斯相关系数是衡量两个二元分类质量的指标,并随着时间的推移对它们进行分析。利用东日本大地震的实际社交媒体数据,给出了实验结果。
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