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Semantics-Enabled User Interest Detection from Twitter

机译:启用语义的用户兴趣检测来自推特

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Social networks enable users to freely communicate with each other and share their recent news, ongoing activities or views about different topics. As a result, user interest detection from social networks has been the subject of increasing attention. Some recent works have proposed to enrich social posts by annotating them with unambiguous relevant ontological concepts extracted from external knowledge bases and model user interests as a bag of concepts. However, in the bag of concepts approach, each topic of interest is represented as an individual concept that is already predefined in the knowledge base. Therefore, it is not possible to infer fine-grained topics of interest, which are only expressible through a collection of multiple concepts or emerging topics, which are not yet defined in the knowledge base. To address these issues, we view each topic of interest as a conjunction of several concepts, which are temporally correlated on Twitter. Based on this, we extract active topics within a given time interval and determine a users inclination towards these active topics. We demonstrate the effectiveness of our approach in the context of a personalized news recommendation system. We show through extensive experimentation that our work is able to improve the state of the art.
机译:社交网络使用户能够互相自由沟通,并分享他们最近的新闻,正在进行的活动或关于不同主题的景观。因此,来自社交网络的用户兴趣检测是提高关注的主题。最近的一些作品通过用从外部知识库和模型用户兴趣提取的明确相关的相关内在概念来丰富社交职位,以作为一袋概念。然而,在概念方法的袋中,每个感兴趣的主题被表示为在知识库中已经预定义的单个概念。因此,不可能推断出浓郁的兴趣主题,这些主题仅通过集合的多个概念或新兴主题来表示,这些主题尚未在知识库中定义。为了解决这些问题,我们将每个兴趣的主题视为几个概念的结合,这些概念在Twitter上暂时关联。基于此,我们在给定的时间间隔内提取主动主题,并确定用户倾向于这些活动主题。我们展示了我们在个性化新闻推荐系统的背景下的方法的有效性。我们通过广泛的实验表明我们的工作能够改善现有技术。

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