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Collaborative Filtering Cold-Start Recommendation Based on Dynamic Browsing Tree Model in E-commerce

机译:基于动态浏览树模型在电子商务中的协作过滤冷启动推荐

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摘要

Collaborative filtering is the most successful and widely used recommendation algorithm in E-commerce recommender systems currently. However, it faces severe challenge of cold-start problem. To solve the new item problem in cold-start, a cold-start recommendation method based on dynamic browsing tree model is proposed. Firstly, user browsing records are transformed to Dynamic Browsing Tree (DBT) based on product categories of E-commerce website. Secondly, a fresh degree decay operator based on access time is designed, then an item category similarity between leaves of DBT and new item is proposed. Finally, an Interest Matching Degree (IMD) measure is designed to compute the matching degree between new item and dynamic browsing trees of all users, thus those users who have higher IMD than designated threshold will be chosen as target audience for new item. The experimental results show that the proposed method can efficiently realize new item recommendation for collaborative filtering cold-start.
机译:协作过滤是当前最成功和最广泛使用的电子商务推荐系统推荐算法。然而,它面临着冷启动问题的严重挑战。为了解决冷启动中的新项目问题,提出了一种基于动态浏览树模型的冷启动推荐方法。首先,根据电子商务网站的产品类别,将用户浏览记录转换为动态浏览树(DBT)。其次,设计了基于访问时间的新程度衰减运算符,提出了DBT和新项目的叶子之间的项目类别相似性。最后,旨在将兴趣匹配程度(IMD)措施旨在计算所有用户的新项目和动态浏览树之间的匹配程度,因此将选择比指定阈值更高的IMD的用户作为新项目的目标受众。实验结果表明,该方法可以有效地实现新项目推荐,用于协作过滤冷启动。

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