Uncovering the information core in recommender systems

@article{Zeng2014UncoveringTI,
  title={Uncovering the information core in recommender systems},
  author={Wei Zeng and An Zeng and Hao Liu and Ming-Sheng Shang and Tao Zhou},
  journal={Scientific Reports},
  year={2014},
  volume={4}
}
  • Wei Zeng, An Zeng, +2 authors Tao Zhou
  • Published in Scientific reports 2014
  • Computer Science, Medicine
  • Scientific Reports
  • With the rapid growth of the Internet and overwhelming amount of information that people are confronted with, recommender systems have been developed to effectively support users' decision-making process in online systems. So far, much attention has been paid to designing new recommendation algorithms and improving existent ones. However, few works considered the different contributions from different users to the performance of a recommender system. Such studies can help us improve the… CONTINUE READING

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