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Applying Multidimensional Association Rule Mining to Feedback-Based Recommendation Systems

机译:多维关联规则挖掘在基于反馈的推荐系统中的应用

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The main characteristic of collaborative filtering is to provide personalized recommendations to a customer based on the customer profile, without considering content information about domain items. In this paper, we investigated to use a relevance feedback mechanism in the collaborative recommendation system. First, we used the Self-organizing Map (SOM) method to avoid suffering from the scalability and sparsity problem in the collaborative filtering. In addition, we adopted the Statistical Attribute Distance (SAD) method which uses the similarity in statistics of customers¡¦ ratings to calculate customer correlations, instead of using the statistics of customers that rate for similar items. Then, the multi-tier granule mining algorithm was used to find association rules. Finally, with the relevance feedback mechanism and the association rules, the recommendations could be refined to provide customers more relevance information.
机译:协作过滤的主要特征是基于客户个人资料向客户提供个性化推荐,而无需考虑有关域项目的内容信息。在本文中,我们研究了在协作推荐系统中使用相关性反馈机制。首先,我们使用自组织映射(SOM)方法来避免协作过滤中的可伸缩性和稀疏性问题。此外,我们采用了统计属性距离(SAD)方法,该方法使用客户评级统计中的相似性来计算客户相关性,而不是使用对相似项目进行评级的客户统计。然后,使用多层颗粒挖掘算法找到关联规则。最后,借助相关性反馈机制和关联规则,可以对建议进行完善,以向客户提供更多相关性信息。

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