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Information Filtering via Heterogeneous Diffusion in Online Bipartite Networks

机译:在线二分网络中通过异构扩散进行信息过滤

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摘要

The rapid expansion of Internet brings us overwhelming online information, which is impossible for an individual to go through all of it. Therefore, recommender systems were created to help people dig through this abundance of information. In networks composed by users and objects, recommender algorithms based on diffusion have been proven to be one of the best performing methods. Previous works considered the diffusion process from user to object, and from object to user to be equivalent. We show in this work that it is not the case and we improve the quality of the recommendation by taking into account the asymmetrical nature of this process. We apply this idea to modify the state-of-the-art recommendation methods. The simulation results show that the new methods can outperform these existing methods in both recommendation accuracy and diversity. Finally, this modification is checked to be able to improve the recommendation in a realistic case.
机译:互联网的迅速发展给我们带来了压倒性的在线信息,这是个人无法浏览的所有信息。因此,创建了推荐系统来帮助人们挖掘大量信息。在由用户和对象组成的网络中,基于扩散的推荐算法已被证明是性能最好的方法之一。先前的工作认为从用户到对象以及从对象到用户的扩散过程是等效的。我们在这项工作中表明并非如此,并且考虑到此过程的不对称性,我们提高了建议的质量。我们将此想法用于修改最新的推荐方法。仿真结果表明,新方法在推荐精度和多样性上都可以优于现有方法。最后,检查此修改以能够在实际情况下改进建议。

著录项

  • 期刊名称 other
  • 作者

    Fu-Guo Zhang; An Zeng;

  • 作者单位
  • 年(卷),期 -1(10),6
  • 年度 -1
  • 页码 e0129459
  • 总页数 13
  • 原文格式 PDF
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