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Enhancing collaborative filtering by frequent usage patterns

机译:通过频繁使用模式增强协作滤波

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摘要

Recommender systems contribute to the personalization of resources on web sites and information retrieval systems. In this paper, we present a hybrid recommender system using a user based approach, which combines predictions based on web usage patterns and rating data. We suggest a new technique that takes into account frequent patterns in order to compute correlations between users and select neighbors. Then, we combine this technique with collaborative filtering using Pearson correlation metric. The aim of this combination consists in the evaluation of the impact of each technique on recommendations. The performance of our system is tested without and by combining predictions in terms of accuracy and robustness. The different tests show that the more the navigational based technique is involved in the recommendation process, the more the best predictions are accurate and the system is robust.
机译:推荐系统有助于对网站和信息检索系统的资源的个性化。在本文中,我们使用基于用户的方法呈现混合推荐系统,其基于Web使用模式和评级数据组合预测。我们建议一种考虑频繁模式的新技术,以便计算用户之间的相关性并选择邻居。然后,我们将这种技术与使用Pearson相关度量的协同过滤结合起来。这种组合的目的在于评估每种技术对建议的影响。通过在准确性和稳健性方面,无需和通过组合预测来测试我们的系统的性能。不同的测试表明,导航的技术越多涉及推荐过程,最佳预测越多,准确,系统是强大的。

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