Incorporating Auxiliary Information in Collaborative Filtering Data Update with Privacy Preservation

@article{Wang2014IncorporatingAI,
  title={Incorporating Auxiliary Information in Collaborative Filtering Data Update with Privacy Preservation},
  author={Xiwei Wang and Jun Zhang and Pengpeng Lin and Nirmal Thapa and Yin Wang and Jie Wang},
  journal={International Journal of Advanced Computer Science and Applications},
  year={2014},
  volume={5}
}
  • Xiwei Wang, Jun Zhang, +3 authors J. Wang
  • Published 2014
  • Computer Science
  • International Journal of Advanced Computer Science and Applications
Online shopping has become increasingly popular in recent years. More and more people are willing to buy products through Internet instead of physical stores. For promotional purposes, almost all online merchants provide product recommendations to their returning customers. Some of them ask professional recommendation service providers to help develop and maintain recommender systems while others need to share their data with similar shops for better product recommendations. There are two… Expand
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