Ranking-Oriented Collaborative Filtering: A Listwise Approach

@article{Wang2016RankingOrientedCF,
  title={Ranking-Oriented Collaborative Filtering: A Listwise Approach},
  author={Shuaiqiang Wang and Shanshan Huang and Tie-Yan Liu and Jun Ma and Zhumin Chen and Jari Veijalainen},
  journal={ACM Trans. Inf. Syst.},
  year={2016},
  volume={35},
  pages={10:1-10:28}
}
Collaborative filtering (CF) is one of the most effective techniques in recommender systems, which can be either rating oriented or ranking oriented. Ranking-oriented CF algorithms demonstrated significant performance gains in terms of ranking accuracy, being able to estimate a precise preference ranking of items for each user rather than the absolute ratings (as rating-oriented CF algorithms do). Conventional memory-based ranking-oriented CF can be referred to as pairwise algorithms. They… CONTINUE READING

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