Publisher
Springer Nature Switzerland
Reference35 articles.
1. Jagadish HV et al (2019) The responsibility challenge for data. In: Proceedings of the 2019 international conference on management of data. SIGMOD’19. Association for Computing Machinery, Amsterdam, Netherlands, pp 412–414
2. Stoyanovich J (2019) TransFAT: translating fairness, accountably and transparency into data science practice. In: 1st international workshop on processing information ethically, PIE@ CAiSE 2019
3. Lebovitz S, Levina N, Lifshitz-Assaf H (2021) Is AI ground truth really ‘true’? The dangers of training and evaluating AI tools based on experts’ know-what. In: The dangers of training and evaluating AI tools based on experts’ know-what, pp 1501–1525
4. Saltz JS, Dewar N (2019) Data science ethical considerations: a systematic literature review and proposed project framework. Ethics Inf Technol 21:197–208
5. Barocas S, Boyd D (2017) Engaging the ethics of data science in practice. Commun ACM 60(11):23–25