2nd FATREC workshop: responsible recommendation

@article{Kamishima20182ndFW,
  title={2nd FATREC workshop: responsible recommendation},
  author={Toshihiro Kamishima and Pierre-Nicolas Schwab and Michael D. Ekstrand},
  journal={Proceedings of the 12th ACM Conference on Recommender Systems},
  year={2018}
}
The second Workshop on Responsible Recommendation (FATREC 2018) was held in conjunction with the 12th ACM Conference on Recommender Systems on October 6th, 2018 in Vancouver, Canada. This full-day workshop brought together researchers and practitioners to discuss several topics under the banner of social responsibility in recommender systems: fairness, accountability, transparency, privacy, and other ethical and social concerns. 
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References

FATREC Workshop on Responsible Recommendation
TLDR
This full-day workshop brought together researchers and practitioners to discuss several topics under the banner of social responsibility in recommender systems: fairness, accountability, transparency, privacy, and other ethical and social concerns.