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Modeling and broadening temporal user interest in personalized news recommendation

机译:在个性化新闻推荐中建模和扩大临时用户的兴趣

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摘要

User profiling is an important step for solving the problem of personalized news recommendation. Traditional user profiling techniques often construct profiles of users based on static historical data accessed by users. However, due to the frequent updating of news repository, it is possible that a user's finegrained reading preference would evolve over time while his/her long-term interest remains stable. Therefore, it is imperative to reason on such preference evaluation for user profiling in news recommend-ers. Besides, in content-based news recommenders, a user's preference tends to be stable due to the mechanism of selecting similar content-wise news articles with respect to the user's profile. To activate users' reading motivations, a successful recommender needs to introduce "somewhat novel" articles to users.In this paper, we initially provide an experimental study on the evolution of user interests in real-world news recommender systems, and then propose a novel recommendation approach, in which the long-term and short-term reading preferences of users are seamlessly integrated when recommending news items. Given a hierarchy of newly-published news articles, news groups that a user might prefer are differentiated using the long-term profile, and then in each selected news group, a list of news items are chosen as the recommended candidates based on the short-term user profile. We further propose to select news items from the user-item affinity graph using absorbing random walk model to increase the diversity of the recommended news list. Extensive empirical experiments on a collection of news data obtained from various popular news websites demonstrate the effectiveness of our method.
机译:用户配置文件是解决个性化新闻推荐问题的重要步骤。传统的用户配置文件技术通常基于用户访问的静态历史数据来构建用户的配置文件。但是,由于新闻存储库的频繁更新,用户的细粒度阅读偏好可能会随着时间的流逝而发展,而他/她的长期兴趣仍然稳定。因此,必须在新闻推荐者中对用户配置进行这种偏好评估。此外,在基于内容的新闻推荐器中,由于相对于用户的简档选择相似的按内容分类的新闻文章的机制,用户的偏好趋于稳定。为了激发用户的阅读动机,成功的推荐者需要向用户介绍“有些新颖”的文章。本文首先对真实新闻推荐系统中用户兴趣的演变进行了实验研究,然后提出了一种新颖的推荐方法,在推荐新闻项目时,无缝整合了用户的长期和短期阅读偏好。给定新发布的新闻文章的层次结构,使用长期配置文件来区分用户可能偏爱的新闻组,然后在每个选定的新闻组中,根据短消息选择新闻项列表作为推荐候选对象术语用户个人资料。我们还建议使用吸收随机游走模型从用户项亲和图中选择新闻项,以增加推荐新闻列表的多样性。对从各种流行新闻网站获得的新闻数据进行的大量实证实验证明了我们方法的有效性。

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