多标准推荐系统中的用户和项目模式匹配

Pittaya Poompuang, W. Premchaiswadi
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引用次数: 5

摘要

在推荐系统中,可以通过将商品的几个特征的评级信息整合到任意两个用户或两个商品之间的相似性计算中,从而提高推荐的质量。然而,这些特征的增量信息对推荐系统有重要的影响。例如,在生成推荐的过程中,增加了相似性计算的复杂性,消耗了更多的资源。在本文中,我们提出了几种利用这些信息提供相关推荐的技术,并通过直接匹配用户偏好和项目特征强度来降低相似性计算的复杂性。
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User and Item Pattern Matching in Multi-criteria Recommender Systems
Information on the ratings of several features of items can be deployed to improve the quality of recommendations in recommender systems by incorporating them into similarity calculation between any two users or two items. However, the incremental information of these features has important impacts on recommender systems. For example, the complexity of similarity calculation is increased and more resources are consumed during the process for generating recommendations. In this paper, we propose several techniques by using this information to provide relevant recommendations and to reduce the complexity in similarity computation by directly matching between preferences of user and the strength of item features.
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