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Predicting Typical User Preferences Using Entropy in Content Based Collaborative Filtering System

机译:在基于内容的协同过滤系统中使用熵预测典型的用户偏好

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Recommendation techniques using collaborative filtering have the sparsity problem because recommendations are made based on thousands of user preferences on items they click. Another problem is that these systems give recommendations based on profiles match between only two users. The collaborative filtering techniques using data accumulated from users' mouse clicks contain inaccurately rated information. Therefore user preferences cannot be automatically regarded as accurate data, so users within the matrix in collaborative filtering system need to be optimized by using entropy. The proposed method is capable of optimizing collaborative users, in which users are grouped according to the vector space model and the K-means algorithm to solve the sparsity problem. To extract features of documents, the proposed method uses the association word mining method with essential word in content based filtering to solve the problem of disambiguation and the multidimensional problem. After grouping, the typical preference can be extracted by assigning typical user preferences in the form of weights. This method reduces the inaccuracy of recommendations based on preferences that unproven users rate. In addition, it saves the time for retrieving a similar user within a group. It thus enables dynamic recommendations.
机译:使用协作过滤的推荐技术存在稀疏性问题,因为基于他们单击的项目的数千个用户偏好来进行推荐。另一个问题是这些系统仅基于两个用户之间的配置文件匹配给出建议。使用从用户的鼠标单击累积的数据的协作过滤技术包含不正确的评级信息。因此,用户偏好不能自动视为准确数据,因此需要通过使用熵来优化协作过滤系统中矩阵内的用户。提出的方法能够优化协作用户,根据矢量空间模型和K-means算法对用户进行分组,以解决稀疏问题。为了提取文档的特征,该方法在内容过滤中使用了带有必要词的联想词挖掘方法,以解决歧义和多维问题。分组后,可以通过分配权重形式的典型用户偏好来提取典型偏好。此方法可减少基于未经证实的用户评分的偏好所导致的建议的不准确性。另外,它节省了检索组中相似用户的时间。因此,它可以实现动态建议。

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