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Adaptive User Profile Model and Collaborative Filtering for Personalized News

机译:适应性用户配置文件模型和个性化新闻的协作过滤

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In recent years, personalized news recommendation has received increasing attention in IR community. The core problem of personalized recommendation is to model and track users’ interests and their changes. To address this problem, both content-based filtering (CBF) and collaborative filtering (CF) have been explored. User interests involve interests on fixed categories and dynamic events, yet in current CBF approaches, there is a lack of ability to model user’s interests at the event level. In this paper, we propose a novel approach to user profile modeling. In this model, user’s interests are modeled by a multi-layer tree with a dynamically changeable structure, the top layers of which are used to model user interests on fixed categories, and the bottom layers are for dynamic events. Thus, this model can track the user’s reading behaviors on both fixed categories and dynamic events, and consequently capture the interest changes. A modified CF algorithm based on the hierarchically structured profile model is also proposed. Experimental results indicate the advantages of our approach.
机译:近年来,个性化的新闻推荐已在IR社区受到越来越受到关注。个性化推荐的核心问题是模拟和跟踪用户的兴趣及其变化。为了解决这个问题,已经探讨了基于内容的过滤(CBF)和协作滤波(CF)。用户兴趣涉及对固定类别和动态事件的兴趣,但在当前的CBF方法中,缺乏在活动级别模拟用户的兴趣的能力。在本文中,我们提出了一种新的用户简档建模方法。在该模型中,用户的兴趣由具有动态变化结构的多层树建模,其中顶层用于对固定类别进行建模,底层用于动态事件。因此,该模型可以跟踪用户在固定类别和动态事件上的读取行为,从而捕获兴趣发生变化。还提出了一种基于分层结构型材模型的修改的CF算法。实验结果表明我们的方法的优势。

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