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Web User Clustering Techniques for Recommendation Systems

机译:推荐系统的Web用户聚类技术

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The Recommender system is a revolutionary technique in E-commerce marketing representing the user preferences and suggestions on items such as books, movies or products. Also, the preferences for any target users are predicted using different recommendation methods. The preferences for any target user can be tailored using different Recommendation methods, such as Content, Collaborative and Hybrid Techniques. There are different challenges that are addressed by the recommendation system: classifying and clustering the user preferences and ratings, finding the users who have common characteristics, suggesting the suitable items to the target user based on past history of users. This chapter provides an elaborative discussion on variety of Recommendation systems techniques, clustering techniques and their merits and demerits.
机译:推荐器系统是电子商务营销中的一项革命性技术,代表了用户对书籍,电影或产品等商品的偏好和建议。同样,使用不同的推荐方法可以预测任何目标用户的偏好。可以使用不同的“推荐”方法(例如“内容”,“协作”和“混合技术”)来定制任何目标用户的首选项。推荐系统解决了不同的挑战:对用户的喜好和等级进行分类和聚类,找到具有共同特征的用户,根据用户的过去历史向目标用户建议合适的商品。本章对各种建议书系统技术,聚类技术及其优缺点进行详尽的讨论。

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