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Personalization Recommendation Service in Enterprise Information Portal

机译:企业信息门户中的个性化推荐服务

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Collaborative filtering algorithm is one of the most successful technologies for building recommender systems, and is extensively used in personalized portal. However, existing collaborative filtering algorithms do not consider the change of user interests. For this reason, the systems may recommend unsatisfactory items when user's interest has changed. To solve this problem, by anglicizing and collecting user's information and behavior, proposed and established "user-page" matrix as a collaborative filtering algorithm interest matrix, while using the improved cosine similarity collaborative filtering algorithm to calculate the similarity of user interest, and take the initiative to recommend relevant content to users, and the improved algorithm has obviously improved on recommendation accuracy.
机译:协作过滤算法是构建推荐系统的最成功技术之一,已广泛用于个性化门户中。但是,现有的协作过滤算法没有考虑用户兴趣的变化。因此,当用户的兴趣发生变化时,系统可能会建议不满意的项目。为了解决这个问题,通过对用户信息和行为进行分类和收集,提出并建立了“用户页面”矩阵作为兴趣过滤协同算法,同时使用改进的余弦相似度协同过滤算法来计算用户兴趣的相似度,主动向用户推荐相关内容,改进算法明显提高了推荐准确性。

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