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Recommending Temporally Relevant News Content From Implicit Feedback Data

机译:推荐从隐式反馈数据的时间相关新闻内容

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News has, in this day and age, transformed primarily into a digital format with leading newspapers and news agencies having a significant online presence. The speed at which news reaches the reader notwithstanding, the proliferation of blogs and microblogs to deliver specialized content has become the order of the day. Even highly engaged users tend to disengage with a website when the content they are served is unappealing to them. While recommendation systems have been used to ensure delivery of content to the user in tune with their tastes, these systems face an unprecedented challenge -the transient nature of 'popular' news and users' changing interests. Moreover, the challenge is compounded by the absence of explicit feedback. Most recommendation systems for recommending digital news content rely on inferring user engagement through 'clicks'; which is not necessarily an accurate measure as it gives us no explicit information about the degree to which a user is interested in a news article. In this paper, we introduce and study the behavior of temporal and tag-based models for news article recommendation. Our experiments indicate that incorporating temporal and tag-information improves recommendation quality and increases user engagement. We argue through experimental evaluation that the improved performance is due to recommendation of more personalized news content by the tag-based recommendation algorithms as compared to other models that do not explicitly incorporate user-tag information.
机译:新闻在这一天和年龄,主要转化为数字格式,具有重要报纸和新闻机构,具有重要的在线存在。迄今为止,迄今为止,博客和微博的扩散将成为当天的顺序,新闻的速度达到了读者。甚至高度订婚的用户往往会在其服务的内容下难以与网站脱离。虽然推荐系统已被用于确保将内容的内容交付给用户的口味,这些系统面临前所未有的挑战 - “流行”新闻和用户的变化兴趣的瞬态性质。此外,由于没有明确反馈,挑战是复杂的。用于推荐数字新闻内容的大多数推荐系统依赖于推断用户参与通过“点击”;这不一定是一个准确的衡量标准,因为它没有关于用户对新闻文章感兴趣的程度的明确信息。在本文中,我们介绍并研究了新闻文章推荐的时间和标签的模型的行为。我们的实验表明,延时和标签信息的实施提高了建议质量并提高了用户参与。我们通过实验评估来争辩说,改进的性能是由于基于标签的推荐算法的更多个性化新闻内容的推荐,与未明确地结合用户标签信息的其他模型相比,基于标签的推荐算法。

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