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A Hybrid Recommender Combining User, Item and Interaction Data

机译:结合用户,物品和交互数据的混合推荐器

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While collaborative filtering often yields very good recommendation results, in many real-world recommendation scenarios cold-start and data sparseness remain important problems. This paper presents a hybrid recommender system that integrates user demographics and item characteristics, around a collaborative filtering core based on user-item interactions. The recommender system is evaluated on Movie lens data (including genre information and user data) as well as real-world data from a discount coupon provider. We show that the inclusion of additional item and user information can have great impact on recommendation quality, especially in settings where little interaction data is available.
机译:尽管协作过滤通常会产生很好的推荐结果,但是在许多实际的推荐方案中,冷启动和数据稀疏仍然是重要的问题。本文围绕基于用户-项目交互的协作过滤核心,提出了一种集成了用户人口统计和项目特征的混合推荐系统。根据电影镜头数据(包括体裁信息和用户数据)以及来自折扣优惠券提供者的真实世界数据对推荐系统进行评估。我们表明,包含其他项目和用户信息可能会对推荐质量产生重大影响,尤其是在交互数据很少的情况下。

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