基于项的协同过滤中分组关联项挖掘的分类

Kyung-Yong Chung, Daesung Lee, Kuinam J. Kim
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引用次数: 9

摘要

人们对推荐系统进行了多方面的研究和实现。特别是在协同过滤系统中,更重要的问题是如何对个性化推荐结果进行操作,以提高用户的可理解性和满意度。协同过滤系统根据发现的物品与其他物品之间的预测关系,预测用户感兴趣的物品。为了提高基于项的协同过滤的准确性和性能,本文提出了分组关联项挖掘的分类方法。如果需要将关联项同时重新组合到它们所在的所有其他组中,则建议的方法可能会将关联项重新组合到相关组中。此外,在稀疏数据和协同过滤中从小项目开始的冷启动情况下,该方法可以提高预测性能。该方法消除了因内容或兴趣不一致而产生的评分噪声,提高了预测的准确性和可扩展性。使用MovieLens数据集,对该方法与k-means、平均链接和鲁棒性进行了实证评估。这种方法被发现明显优于以前的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Categorization for Grouping Associative Items Mining in Item-Based Collaborative Filtering
Recommendation systems have been investigated and implemented in many aspects. Particularly, in case of collaborative filtering system, more important issue is how to manipulate the personalized recommendation results for better user understandability and satisfaction. Collaborative filtering system predicts items of interest for users based on predictive relationship discovered between the item and others. In this paper, the categorization for grouping associative items mining, for the purpose of improving accuracy and performance in the item-based collaborative filtering, is proposed. It is possible that, if the associative item is required to be simultaneously regrouped in all other groups in which they occur, the proposed method regrouped the associative items into the relevant group. In addition, the proposed method can result in improved predictive performance under the sparse data and cold-start circumstance that starts from small items in the collaborative filtering. And this method can increase the prediction accuracy and the scalability because of removing the noise generated by ratings on items of dissimilar content or interest. The approach is empirically evaluated for comparison with k-means, average link, and robust, using the MovieLens dataset. This method was found to significantly outperform the previous method.
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