
Generating Storyline with Societal Risk from Tianya Club
Yugai JIA, Xijin TANG
Journal of Systems Science and Information ›› 2017, Vol. 5 ›› Issue (6) : 524-536.
Generating Storyline with Societal Risk from Tianya Club
Major societal problems affect the social stability. It is necessary to understand the public opinion toward those issues to avoid social conflicts. Nowadays the social media become the major platform to track what the public is concerned about and which may be of the societal risk. However, it is very tough to capture the public attention in short time due to huge flow of user-generated contents. In this paper, we approach this problem by expanding the method of generating storyline with the result displayed by a multi-view graph. One real-world example is illustrated and evaluation is given to show the effectiveness of the proposed method.
societal risk / storyline / multi-view graph / dominating set / χ2 statistic {{custom_keyword}} /
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Supported by National Key Research and Development Program of China (2016YFB1000902) and National Natural Science Foundation of China (61473284, 71371107)
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