论文标题

通过突出额外的捏造专家来改善推荐多样性

Improving Recommendation Diversity by Highlighting the ExTrA Fabricated Experts

论文作者

An, Ya-Hui, Dong, Qiang, Yuan, Quan, Wang, Chao

论文摘要

如今,推荐系统(RSE)对个人用户和业务营销变得越来越重要,尤其是在在线电子商务方案中。但是,尽管文献中提出的大多数推荐算法都集中在提高预测准确性上,但建议质量的其他重要方面(例如建议多样性)或多或少地被忽略了。在最新的十年中,推荐多样性引起了更多的研究关注,尤其是在基于用户项目二分网络的模型中。在本文中,我们介绍了一种方法,可以从RSE的用户中提取捏造的专家,称为专家跟踪方法(简称额外),并探索这些捏造的专家在改善推荐多样性方面的能力,通过在众所周知的基于双方网络的方法中强调他们,称为质量扩散(简短)模型。这些额外的模型与建议的准确性和多样性相比,将两个最先进的MD改良模型HHP和BHC进行了比较。在三个现实世界数据集Movielens,Netflix和Rym上的全面经验结果表明,我们提出的基于额外的模型可以实现显着的多样性增益,同时保持可比的推荐准确性水平。

Nowadays, recommender systems (RSes) are becoming increasingly important to individual users and business marketing, especially in the online e-commerce scenarios. However, while the majority of recommendation algorithms proposed in the literature have focused their efforts on improving prediction accuracy, other important aspects of recommendation quality, such as diversity of recommendations, have been more or less overlooked. In the latest decade, recommendation diversity has drawn more research attention, especially in the models based on user-item bipartite networks. In this paper, we introduce a family of approaches to extract fabricated experts from users in RSes, named as the Expert Tracking Approaches (ExTrA for short), and explore the capability of these fabricated experts in improving the recommendation diversity, by highlighting them in a well-known bipartite network-based method, called the Mass Diffusion (MD for short) model. These ExTrA-based models are compared with two state-of-the-art MD-improved models HHP and BHC, with respect to recommendation accuracy and diversity. Comprehensive empirical results on three real-world datasets MovieLens, Netflix and RYM show that, our proposed ExTrA-based models can achieve significant diversity gain while maintain comparable level of recommendation accuracy.

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