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At what price? exploring the potential and challenges of differentially private machine learning for healthcare

  • Aycan Aslan
  • , Tizian Matschak
  • , Maike Greve
  • , Simon Trang
  • , Lutz M Kolbe

Research output: Conference Article in Proceeding or Book/Report chapterArticle in proceedingsResearchpeer-review

Abstract

The increased generation of data has become one of the main drivers of technological innovation in healthcare. This applies in particular to the adoption of Machine Learning models that are used to generate value from the growing available healthcare data. However, the increased processing of sensitive healthcare data comes with challenges in terms of data privacy. Differential privacy, the method of adding randomness to the data to increase privacy, has gained popularity in the last few years as a possible solution. However, while the addition of randomness increases privacy, it also reduces overall model performance, generating a privacy-utility trade-off. Examining this trade-off, we contribute to the literature by providing an empirical paper that experimentally evaluates two prominent and innovative methods of differentially private Machine Learning on medical image and text data to deepen the understanding of the existing potential and challenges of such methods for the healthcare domain.
Original languageEnglish
Title of host publicationHICSS 2023 Proceedings
Number of pages10
Publication date3 Jan 2023
Pages3277-3286
DOIs
Publication statusPublished - 3 Jan 2023
Externally publishedYes
EventHawaii International Conference on System Sciences - United States, Lahaina, United States
Duration: 3 Jan 20236 Jan 2023
Conference number: 56
https://hdl.handle.net/10125/102456

Conference

ConferenceHawaii International Conference on System Sciences
Number56
LocationUnited States
Country/TerritoryUnited States
CityLahaina
Period03/01/202306/01/2023
Internet address

Keywords

  • Differential privacy
  • PATE framework
  • Differentially private stochastic gradient descent

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