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Improve E-Commerce Recommendation by Classification Tree and Fuzzy Sets

机译:通过分类树和模糊集改进电子商务建议

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In order to enhance the performance of E-Commerce recommendation, a hybrid filtering approach based on the taxonomy of E-Commerce platform is put forward. The classification tree of products is used to find the users with similar shopping intention. The sparsity of user ratings, major problem for collaborative filtering, is overcome. A two-granularity user profile is built to reflect the customer's shopping interests. User profile is firstly described as a set of leaf nodes of the classification tree. Then, each category of the user profile is refined by the theory of fuzzy set. Fuzzy sets make user profile and item representation more accurate. At the same time, tags instead of key words extracted from item content, are used for the building of user profiles and representation of items. It overcomes the analysis difficulty and large calculation problems for content-based filtering.
机译:为了提高电子商务推荐的性能,提出了一种基于电子商务平台分类法的混合过滤方法。产品的分类树用于查找具有相似购物意向的用户。克服了用户评分的稀疏性(协作过滤的主要问题)。建立了两个粒度的用户配置文件,以反映客户的购物兴趣。首先将用户配置文件描述为分类树的一组叶节点。然后,通过模糊集理论对用户配置文件的每个类别进行细化。模糊集使用户配置文件和项目表示更加准确。同时,标记(而不是从项目内容中提取的关键字)用于构建用户资料和项目表示。它克服了基于内容的过滤的分析困难和计算量大的问题。

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