推特推荐系统研究

R. Katarya, Yamini Arora
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引用次数: 5

摘要

社会数据挖掘是这个新技术时代的一个主要研究领域。各种流行的社交网站,如Facebook、YouTube、Twitter,为人们提供了一个交流信息的平台,并与朋友、亲戚和其他活跃用户保持联系。Twitter为活跃用户提供了一个平台,用户可以通过发布280个字符的tweet来表达他们对热门话题的看法和意见。Twitter的这一特点使其有别于其他社交网站。这个受欢迎的微博网站拥有大约3.28亿用户,每天生成的tweet数量大约为5亿条。因此,用户每天在他们的时间轴上收到的信息量是相当大的。推荐系统的引入就是为了解决这个信息过载的主要问题。这些系统帮助用户找到有用和有趣的信息。信息过滤是向活跃用户提供重要和有用的推文的重要步骤。他们可能会因为时间轴上铺天盖地的推文而错过重要的信息。本文介绍了推荐系统实现的不同方法和技术,根据用户的行为和其他重要特征向用户推荐重要的推文和关注者。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Survey of Recommendation Systems in Twitter
Social data mining is a major research area in this new era of technology. Various popular social networking websites such as Facebook, YouTube, Twitter provide a platform to the people for exchanging information and maintain a connection with the friends, relatives, and other active users. Twitter presents a platform to the active users for expressing their views and opinions on a trending topic by posting 280-character tweets. This feature of Twitter makes it different from other social networking sites. This popular microblogging site has approximately 328 million users and the number of tweets that are generated every day is approximately 500 million. Hence, the amount of information that users receive daily on their timeline is quite large. Recommender Systems have been introduced to solve this major problem of information overload. These systems help users to find useful and interesting information. Information filtering is a major step to provide important and useful tweets to the active users. They may miss out the important information due to overwhelming tweets on their timeline. The paper presents the different approaches and techniques that recommender systems have implemented to recommend the important tweets as well as followees to the users based on their behavior and other important features.
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