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O- Recommend: An Optimized User-Based Collaborative Filtering Recommendation System

机译:O-推荐:基于用户的优化协作过滤推荐系统

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When people purchase products on the Internet, the overwhelming information makes it difficult to choose a satisfactory merchandise. Hence, an effective recommendation system seems to be very necessary. The user-based collaborative filtering recommendation is the earliest and most popular recommendation system. The most significant step of user-based collaborative filtering recommendation is comprehensive user similarity calculation. However, most recommendation systems ignore the indispensability of user evaluation normalization and the weighted user attributes in comprehensive user similarity calculation, which leads to the inaccurate recommendation. Based on these issues, this paper proposes an optimized user-based collaborative filtering recommendation system, called O-Recommend. O-Recommend not only validates the necessity of the user evaluation normalization and the weighted user attributes in the comprehensive user similarity calculation, but also improves the recommendation accuracy.
机译:当人们在Internet上购买产品时,太多的信息使得难以选择令人满意的商品。因此,有效的推荐系统似乎非常必要。基于用户的协作过滤推荐是最早,最受欢迎的推荐系统。基于用户的协作过滤推荐的最重要步骤是全面的用户相似度计算。但是,大多数推荐系统在全面的用户相似度计算中都忽略了用户评估规范化和加权用户属性的必要性,从而导致推荐不准确。基于这些问题,本文提出了一种优化的基于用户的协同过滤推荐系统,称为O-Recommend。 O-Recommend不仅在综合用户相似度计算中验证了用户评估规范化和加权用户属性的必要性,还提高了推荐准确性。

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