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Identifying the Topology of the K-pop Video Community on YouTube: A Combined Co-comment Analysis Approach

机译:识别YouTube上的K-pop视频社区的拓扑:联合注释分析方法

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YouTube is a successful social network that people use to upload, watch, and comment on videos. We believe comments left on these videos can provide insight into user interests, but to this point have not been used to map out a specific video community. Our study investigates whether and how user commenting behavior impacts the topology of the K-pop video community through analysis of co-commenting behavior on these videos. We apply a traditional author cocitation analysis to this behavior, in a process we refer to as co-comment analysis, to detect the topology of this community. This involves: a) an analysis of user co-comments to elicit the inclination of user homophily within the community; b) an analysis of user co-comments, weighted frequency of co-comments, to detect user interests in the community; and c) an analysis of user co-comments, weighted sentiment scores, to capture user opinions by polarity. The results indicate that users who comment on specific K-pop videos also tend to comment on topically similar YouTube videos. We also find that the number of comments made by users correlates with the degree of positivity of their comments. Conversely, users who comment negatively on K-pop videos are not inclined to form specific user groups, but rather present only their opinions individually.
机译:YouTube是一个成功的社交网络,人们可以用来上传,观看视频和评论视频。我们认为,这些视频上留下的评论可以洞悉用户的兴趣,但到目前为止,尚未用于规划特定的视频社区。我们的研究通过分析这些视频的共同评论行为来调查用户评论行为是否以及如何影响K-pop视频社区的拓扑。我们将传统的作者引用分析应用于此行为,在称为共同评论分析的过程中,以检测该社区的拓扑。这包括:a)对用户共同评论的分析,以引起社区内用户同质化的倾向; b)分析用户共同评论,共同评论的加权频率,以检测社区中的用户兴趣; c)分析用户共评,加权情感分数,以按极性捕获用户意见。结果表明,对特定的K-pop视频发表评论的用户也倾向于评论局部相似的YouTube视频。我们还发现,用户发表的评论数量与其评论的积极程度相关。相反,对K-pop视频持否定评论的用户不倾向于形成特定的用户组,而只是单独表达自己的观点。

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    Department of Library and Information Science, Yonsei University, 50 Yonsei-ro, Seodaemun-gu, Seoul, Korea;

    Department of Library and Information Science, Yonsei University, 50 Yonsei-ro, Seodaemun-gu, Seoul, Korea;

    Department of Library and Information Science, Yonsei University, 50 Yonsei-ro, Seodaemun-gu, Seoul, Korea;

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