Learning to Limit Data Collection via Scaling Laws: A Computational Interpretation for the Legal Principle of Data Minimization

Author:

Shanmugam Divya1,Diaz Fernando2,Shabanian Samira3,Finck Michele4,Biega Asia5

Affiliation:

1. MIT, USA

2. Google, USA

3. Microsoft Research, Canada, Canada

4. University of Tuebigen, Germany

5. Max Planck Institute for Security and Privacy, Germany

Publisher

ACM

Reference40 articles.

1. Datatilsynet: The Norwegian Data Protection Authority. [n.d.]. Artificial Intelligence and Privacy. Datatilsynet: The Norwegian Data Protection Authority. [n.d.]. Artificial Intelligence and Privacy.

2. Bowen Baker Otkrist Gupta Ramesh Raskar and Nikhil Naik. 2017. Accelerating neural architecture search using performance prediction. arXiv preprint arXiv:1705.10823(2017). Bowen Baker Otkrist Gupta Ramesh Raskar and Nikhil Naik. 2017. Accelerating neural architecture search using performance prediction. arXiv preprint arXiv:1705.10823(2017).

3. Asia  J. Biega and Michèle Finck . 2021 . Reviving Purpose Limitation and Data Minimisation in Data-Driven Systems. Technology and Regulation( 2021). Asia J. Biega and Michèle Finck. 2021. Reviving Purpose Limitation and Data Minimisation in Data-Driven Systems. Technology and Regulation(2021).

4. Asia J. Biega Peter Potash Hal Daumé Fernando Diaz and Michèle Finck. 2020. Operationalizing the Legal Principle of Data Minimization for Personalization. In ACM(43) SIGIR ’20. 399–408. Asia J. Biega Peter Potash Hal Daumé Fernando Diaz and Michèle Finck. 2020. Operationalizing the Legal Principle of Data Minimization for Personalization. In ACM(43) SIGIR ’20. 399–408.

5. Reuben Binns and Valeria Gallo. 2019. Data minimisation and privacy-preserving techniques in AI systems. https://ico.org.uk/about-the-ico/news-and-events/ai-blog-data-minimisation-and-privacy-preserving-techniques-in-ai-systems/ Reuben Binns and Valeria Gallo. 2019. Data minimisation and privacy-preserving techniques in AI systems. https://ico.org.uk/about-the-ico/news-and-events/ai-blog-data-minimisation-and-privacy-preserving-techniques-in-ai-systems/

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