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A Collaborative Recommender Combining Item Rating Similarity and Item Attribute Similarity

机译:结合项目评分相似度和项目属性相似度的协同推荐人

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Collaborative filtering (CF) is the most popular recommendation technique nowadays. Traditional CF approaches compute a similarity value between the target user and each other user by computing the relativity of their rating style, which is the set of ratings given on the same items. Based on the ratings of the most similar users, commonly referred to as neighbors, CF algorithms compute recommendations for the target user. The problem with this approach is that the similarity value is only considering the user-item ratings. To solve this problem, this paper combining the item attribute similarity and the item rating similarity, which takes into account the influence of item information and user rating to enhance the item-based CF. The experimental results show that the algorithm combined the item attribute similarity and the item rating similarity is promising, since it does not only solve the dataset sparsity problem of recommender systems, but also assists in increasing the accuracy of systems employing it.
机译:协同过滤(CF)是现在最受欢迎的推荐技术。传统的CF方法通过计算其评级样式的相对性来计算目标用户和彼此用户之间的相似性值,这是同一项目上给出的一组额定值。基于最相似用户的评级,通常称为邻居,CF算法计算目标用户的建议。这种方法的问题是相似值仅考虑用户项额定值。为了解决这个问题,本文结合了项目属性相似性和项目评级相似性,这考虑了项目信息和用户评级的影响,以增强基于项目的CF。实验结果表明,该算法组合项目属性相似性和项目评级相似性是有前途的,因为它不仅解决了推荐系统的数据集稀疏问题,而且还有助于提高采用它的系统的准确性。

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