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A Dynamic Web Recommender System Using Hard and Fuzzy K-Modes Clustering

机译:使用硬和模糊K模式聚类的动态Web推荐系统

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This paper describes the design and implementation of a new dynamic Web Recommender System using Hard and Fuzzy K-modes clustering. The system provides recommendations based on user preferences that change in real time taking also into account previous searching and behavior. The recommendation engine is enhanced by the utilization of static preferences which are declared by the user when registering into the system. The proposed system has been validated on a movie dataset and the results indicate successful performance as the system delivers recommended items that are closely related to user interests and preferences.
机译:本文介绍了一种新的基于Hard和Fuzzy K-modes聚类的动态Web推荐系统的设计和实现。该系统基于实时更改的用户偏好提供建议,同时还考虑到先前的搜索和行为。通过使用用户注册到系统时声明的静态首选项,增强了推荐引擎。所提出的系统已经在电影数据集上得到了验证,结果表明该系统具有良好的性能,因为该系统提供了与用户兴趣和喜好密切相关的推荐项目。

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