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Measuring user influence on Twitter: A survey

机译:衡量用户对Twitter的影响:一项调查

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Centrality is one of the most studied concepts in social network analysis. There is a huge literature regarding centrality measures, as ways to identify the most relevant users in a social network. The challenge is to find measures that can be computed efficiently, and that can be able to classify the users according to relevance criteria as close as possible to reality. We address this problem in the context of the Twitter network, an online social networking service with millions of users and an impressive flow of messages that are published and spread daily by interactions between users. Twitter has different types of users, but the greatest utility lies in finding the most influential ones. The purpose of this article is to collect and classify the different Twitter influence measures that exist so far in literature. These measures are very diverse. Some are based on simple metrics provided by the Twitter API, while others are based on complex mathematical models. Several measures are based on the PageRank algorithm, traditionally used to rank the websites on the Internet. Some others consider the timeline of publication, others the content of the messages, some are focused on specific topics, and others try to make predictions. We consider all these aspects, and some additional ones. Furthermore, we include measures of activity and popularity, the traditional mechanisms to correlate measures, and some important aspects of computational complexity for this particular context.
机译:中心性是社交网络分析中研究最多的概念之一。关于集中性度量的大量文献,作为识别社交网络中最相关用户的方法。面临的挑战是找到可以有效计算的度量,并能够根据相关性标准尽可能接近实际情况对用户进行分类。我们在Twitter网络,具有数百万用户的在线社交网络服务以及每天通过用户之间的交互发布和传播的令人印象深刻的消息流的背景下解决了这个问题。 Twitter有不同类型的用户,但最大的用途在于找到最有影响力的用户。本文的目的是收集和分类迄今为止文献中存在的各种Twitter影响力度量。这些措施非常多样化。有些基于Twitter API提供的简单指标,而另一些基于复杂的数学模型。有几种措施是基于PageRank算法的,该算法通常用于对Internet上的网站进行排名。其他一些考虑发布的时间表,其他一些考虑消息的内容,一些关注特定主题,而其他尝试做出预测。我们考虑了所有这些方面以及其他一些方面。此外,我们包括活动和受欢迎程度的度量,与度量相关的传统机制,以及针对此特定上下文的计算复杂性的一些重要方面。

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