基于四主题的Instagram帖子影响力分析

A. Müngen, Mehmet Kaya
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引用次数: 5

摘要

现实生活中没有流行病这个词;它可以在虚拟网络中看到。社会网络是一个非常复杂的网络,提取信息对于分析人类行为非常重要。在社交网络分析中,发现用户对其他用户的影响一直是一个有趣的领域。几乎所有以前的工作都集中在计算用户轮廓上。然而,所有的职位都有不同的影响力值。提出了一种基于融合基序分析(fuse motif analysis, FMA)的Instagram社交网络最有效帖子挖掘方法。我们专注于衡量哪个帖子对其他人的影响更大。在我们的研究中,我们在这种方法中考虑了影响这一过程的各种因素。这些因素包括用户其他帖子的受欢迎程度、标签频率和基于情感的评论分析。我们试图创建一个独特的模型来预测所有这些因素中最具影响力的职位。我们从Instagram上收集了大量的数据,并分享了我们对这些数据的实验结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Quad motif-based influence analyse of posts in Instagram
Word of epidemic is not specified for real life; it can be seen in virtual networks. Social networks are very complicated networks and extracting information is very important for analyze human behaviors. Finding user's influence on other users is always interesting area in social networks analyses. Almost all previous works focus on calculating user profiles. However, all posts have different influence values. We propose a method finding most effective posts which based on fuse motif analysis (FMA) for The Instagram Social Network. We focus to measure which post have more effect on other people. In our study, we take into account variety of factors having effects on this process in this method. These factors include users' other posts popularity, tag frequency and emotional based sentimental analyze on comments. We try to create a unique model to predict most influencing posts with all these factors. We collect a huge amount of data from the Instagram and share our experimental results on this data.
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