A recommendation algorithm using multi-level association rules

Choonho Kim, Juntae Kim
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引用次数: 73

Abstract

Recommendation systems predict user's preference to suggest items. Collaborative filtering is the most popular method in implementing a recommendation system. The collaborative filtering method computes similarities between users based on each user's known preference, and recommends the items preferred by similar users. Although the collaborative filtering method generally shows good performance, it suffers from two major problems - data sparseness and scalability. We present a model-based recommendation algorithm that uses multilevel association rules to alleviate those problems. In this algorithm, we build a model for preference prediction by using association rule mining. Multilevel association rules are used to compute preferences for items. The experimental results show that applying multilevel association rules is effective, and performance of the algorithm is improved compared with the collaborative filtering method in terms of the recall and the computation time.
基于多级关联规则的推荐算法
推荐系统预测用户推荐商品的偏好。协同过滤是实现推荐系统中最常用的方法。协同过滤方法根据每个用户的已知偏好计算用户之间的相似度,并推荐相似用户喜欢的项目。协同过滤方法虽然具有良好的性能,但存在数据稀疏性和可扩展性两个主要问题。我们提出了一种基于模型的推荐算法,该算法使用多级关联规则来缓解这些问题。在该算法中,我们利用关联规则挖掘建立了偏好预测模型。多级关联规则用于计算项的首选项。实验结果表明,采用多级关联规则是有效的,与协同过滤方法相比,该算法在查全率和计算时间上都有提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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