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Personalized Tag Recommendation Based on Transfer Matrix and Collaborative Filtering

机译:基于转移矩阵和协同过滤的个性化标签推荐

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In social tagging systems, users are allowed to label resources with tags, and thus the system builds a personalized tag vocabulary for every user based on their distinct preferences. In order to make the best of the personalized characteristic of users’ tagging behavior, firstly the transfer matrix is used in this paper, and the tag distributions of query resources are mapped to users’ query before the recommendation. Meanwhile, we find that only considering the user’s preference model, the method cannot recommend new tags for users. So we utilize the thought of collaborative filtering, and produce the recommend tags based on the query user and his/her nearest neighbors' preference models. The experiments conducted on the Delicious corpus show that our method combining transfer matrix with collaborative filtering produces better recommendation results.
机译:在社交标签系统中,允许用户使用标签来标记资源,因此系统根据每个用户的不同偏好为其建立个性化标签词汇表。为了充分利用用户标签行为的个性化特征,本文首先使用传递矩阵,在推荐之前将查询资源的标签分布映射到用户的查询中。同时,我们发现,仅考虑用户的偏好模型,该方法无法为用户推荐新标签。因此,我们利用协作过滤的思想,并基于查询用户及其最近邻居的偏好模型来生成推荐标签。在Delicious语料库上进行的实验表明,将转移矩阵与协作过滤相结合的方法产生了更好的推荐结果。

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