利用个人资料信息预测推特上关注者数量的上升

Juergen Mueller, Gerd Stumme
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引用次数: 9

摘要

当评估一个人在Twitter上受欢迎的原因时,有一件事被认为是主要的驱动因素:许多推文。关于应该发布什么样的推文存在争议,但几乎没有超越推文的内容。特别有趣的是每个Twitter用户的个人资料页面提供的信息。其中一个功能是这些配置文件上的给定名称。心理学和经济学的研究发现,一个人的名字与他的学校成绩或在美国获得面试机会的机会之间存在相关性。因此,我们感兴趣的是这些个人资料信息对关注者数量的影响。我们通过分析大约600万Twitter用户的个人资料来解决这个问题。所有配置文件被分为三组:在其名称字段中有名字、英语单词或两者都没有的用户。假设名字和单词会影响用户的可发现性,进而影响他/她的追随者数量。我们提出了一个分类器,该分类器根据用户群体应用不同的模型来标记在一个月内会增加关注者数量的用户。分类器用接收算子曲线下的面积得分进行评价,得分在0.800以上。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predicting Rising Follower Counts on Twitter Using Profile Information
When evaluating the cause of one's popularity on Twitter, one thing is considered to be the main driver: Many tweets. There is debate about the kind of tweet one should publish, but little beyond tweets. Of particular interest is the information provided by each Twitter user's profile page. One of the features are the given names on those profiles. Studies on psychology and economics identified correlations of the first name to, e.g., one's school marks or chances of getting a job interview in the US. Therefore, we are interested in the influence of those profile information on the follower count. We addressed this question by analyzing the profiles of about 6 Million Twitter users. All profiles are separated into three groups: Users that have a first name, English words, or neither of both in their name field. The assumption is that names and words influence the discoverability of a user and subsequently his/her follower count. We propose a classifier that labels users who will increase their follower count within a month by applying different models based on the user's group. The classifiers are evaluated with the area under the receiver operator curve score and achieves a score above 0.800.
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