CatStream: categorising tweets for user profiling and stream filtering

Sandra Garcia Esparza, Michael P. O'Mahony, Barry Smyth
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引用次数: 25

Abstract

Real-time information streams such as Twitter have become a common way for users to discover new information. For most users this means curating a set of other users to follow. However, at the moment the following granularity of Twitter is restricted to the level of individual users. Our research has highlighted that many following relationships are motivated by a subset of interests that are shared by the users in question. For example, user A might follow user B because of their technology related tweets, but shares little or no interest in their other tweets. As a result, this all-or-nothing following relationship can quickly overwhelm users' timelines with extraneous information. To improve this situation we propose a user profiling approach based on the topical categorisation of users' posted URLs. These topics can then be used to filter information streams so that they focus on more relevant information from the people they follow, based on their core interests. In particular, we present a system called CatStream that provides for a more fine-grained way to follow users on specific topics and filter our timelines accordingly. We present the results of a live-user study that shows how filtered timelines offer a better way to organise and filter their information streams. Most importantly users are generally satisfied with the categories predicted for their profiles and tweets.
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CatStream:为用户分析和流过滤分类推文
像Twitter这样的实时信息流已经成为用户发现新信息的常用方式。对大多数用户来说,这意味着你要安排一组其他用户来关注。但是,目前Twitter的以下粒度仅限于单个用户的级别。我们的研究强调,许多关注关系是由相关用户共享的兴趣子集所激发的。例如,用户A可能因为用户B发布的与技术相关的推文而关注用户B,但对用户B的其他推文几乎没有兴趣。因此,这种“要么全有,要么全无”的关注关系会让用户的时间轴很快被无关的信息淹没。为了改善这种情况,我们提出了一种基于用户发布的url的主题分类的用户分析方法。然后,这些主题可以用来过滤信息流,这样他们就可以根据自己的核心兴趣,从他们关注的人那里关注更相关的信息。特别地,我们提出了一个叫做CatStream的系统,它提供了一种更细粒度的方式来关注特定主题的用户,并相应地过滤我们的时间轴。我们展示了一项实时用户研究的结果,该研究显示了过滤时间轴如何提供一种更好的方式来组织和过滤他们的信息流。最重要的是,用户通常对他们的个人资料和推文的分类预测感到满意。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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