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Pairwise learning to recommend with both users’ and items’ contextual information

机译:成对学习以推荐用户和项目的上下文信息

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摘要

Exponential growth of information generated by social networks requires efficient and scalable recommendation techniques to produce useful results. Traditional methods have become unqualified because they consider only ratings instead of rankings in an item list, and they ignore social contextual information, which is valuable for predicting users' preference. It is significant and challenging to fuse social contextual information into learning to recommendation methods. In this study, the authors first extend user latent features by exploiting users' social relationship such as friendship or trust relations, and extend item latent features with concurrent items. Then they integrate both users' and items' social contextual information into a pairwise learning to recommendation model (named as UIContextRank) to enhance ranking accuracy and recommendation quality. Furthermore, they extend UIContextRank in a distributed environment to improve efficiency and scalability. The authors conduct experiments on both bidirectional and unidirectional social network datasets. The results show that their method significantly outperforms other approaches.
机译:社交网络生成的信息呈指数增长需要有效且可扩展的推荐技术,以产生有用的结果。传统方法变得不合格,因为它们只考虑评分而不是项目列表中的排名,并且忽略了社交上下文信息,这对于预测用户的偏好非常有用。将社会上下文信息融合到学习推荐方法中是非常重要且具有挑战性的。在这项研究中,作者首先通过利用用户的社交关系(如友谊或信任关系)扩展了用户潜在特征,并通过并发项目扩展了项目潜在特征。然后,他们将用户和项目的社交上下文信息都集成到成对学习推荐模型(称为UIContextRank)中,以提高排名准确性和推荐质量。此外,它们在分布式环境中扩展了UIContextRank以提高效率和可伸缩性。作者对双向和单向社交网络数据集进行了实验。结果表明,他们的方法明显优于其他方法。

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