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Collaborative filtering recommendation model with user similarity filling

机译:具有用户相似性填充的协同过滤推荐模型

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Filtering recommendation system is always key and hot point in electronic commerce research; to obtain recommendation result with high accuracy, performance, universality and strong adaptation, improve recommended efficiency and veracity of collaborative filtering recommendation system and provide more personalized recommendation service for users, a kind of collaborative filtering recommendation algorithm integrating user similarity and rating attribute has been designed in the thesis. Firstly, attribute dimensionality of users and corresponding value have been collected, and then rating information on interest of users for the project has been collected to enhance partition degree of user similarity; then user attribute is used to balance similarity among users; at last, multiple Datasets are used to carry out simulation test. Result of the simulation test shows that user depending-on method is adopted in the thesis, which can substantially raise quality of recommendation, and the recommendation can meet practical requirements of users and of practical value for application.
机译:过滤推荐系统始终是电子商务研究中的关键和热点;为了获得高精度,性能,普遍性和强大的适应性,提高协作过滤推荐系统的推荐效率和准确性,为用户提供了更个性化的推荐服务,设计了一种集成用户相似性和评级属性的协作过滤推荐算法在论文中。首先,已经收集了用户的属性维度和相应的值,然后收集了对项目用户感兴趣的信息进行评级,以提高用户相似性的分区;然后,用户属性用于平衡用户之间的相似性;最后,使用多个数据集来执行仿真测试。仿真试验的结果表明,本文采用了用户取决于方法,这可以大大提高建议质量,建议可以满足用户的实际要求和应用的实用价值。

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