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A Survey of Recommender Systems in Twitter

机译:推特推荐系统的调查

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Twitter is a social information network where short messages or tweets are shared among a large number of users through a very simple messaging mechanism. With a population of more than 100M users generating more than 300M tweets each day, Twitter users can be easily overwhelmed by the massive amount of information available and the huge number of people they can interact with. To overcome the above information overload problem, recommender systems can be introduced to help users make the appropriate selection. Researchers have began to study recommendation problems in Twitter but their works usually address individual recommendation tasks. There is so far no comprehensive survey for the realm of recommendation in Twitter to categorize the existing works as well as to identify areas that need to be further studied. The paper therefore aims to fill this gap by introducing a taxonomy of recommendation tasks in Twitter, and to use the taxonomy to describe the relevant works in recent years. The paper further presents the datasets and techniques used in these works. Finally, it proposes a few research directions for recommendation tasks in Twitter.
机译:Twitter是一个社交信息网络,通过非常简单的消息机制,在大量用户中共享短消息或推文。凭借超过100万用户的人口每天产生超过300米的推文,推特用户可以轻松地淹没了可用的大量信息和他们可以与之交互的大量人群。为了克服上述信息过载问题,可以引入推荐系统以帮助用户进行相应的选择。研究人员开始在推特中研究推荐问题,但他们的作品通常会解决个别推荐任务。迄今为止没有对Twitter中推荐领域没有全面调查,以对现有的作品进行分类,并识别需要进一步研究的领域。因此,本文旨在通过在Twitter中引入推荐任务的分类以及使用分类物来描述近年来的相关作品来填补这一差距。本文进一步介绍了这些作品中使用的数据集和技术。最后,它提出了在推特中的推荐任务的一些研究方向。

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