使用社会网络分析探索基于性别的影响者

Sounthar Manickavasagam, B. V. Sundaram
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引用次数: 2

摘要

社交网络以互动协作和社会互动主导着社会。现在分享、发布、点赞和评论各种感兴趣的话题是很常见的。这些互动为探索在线用户之间的社会关系提供了研究空间。预测社交网络中的影响者可以帮助我们控制社交网络中的信息流动。本研究工作的目的是分析Facebook用户覆盖照片中的喜欢,以确定影响者及其性别。通过聚类系数、度分析和三元普查,我们能够识别影响者,发现男性在网络中是强影响者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Exploring gender based influencers using Social Network Analysis
The social network is dominating the society with interactive collaboration and social interactions. It is very common now to share, post, like and comment on various topic of interest. These interactions has given space for research to explore the social relationships among online users. Predicting the influencers in social network can help us to control the flow of information in them. The objective of this research work is to analyze the likes in Facebook users cover photos to identify the influencers and their gender. Using clustering coefficient, degree analysis and triadic census we were able to identify the influencers and found that men are strong influencers in the network.
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