Vinith Suriyakumar, Differentially Private Prediction in Health Care Settings

Machine learning has the potential to improve health care through its ability to extract information from data. Unfortunately, machine learning is susceptible to privacy attacks which leak information about the data it was trained on. This can have dire consequences in health care where protecting patient privacy is of the utmost importance. Differential privacy has been proposed as the leading technique to defend against privacy attacks and has had successful use by the US Census, Google, and Apple. This talk will present the challenges of using differentially private machine learning in health care and how future solutions might address them.

Om Podcasten

A selection of interviews and talks exploring the normative dimensions of AI and related technologies in individual and public life, brought to you by the interdisciplinary Ethics of AI Lab at the Centre for Ethics, University of Toronto.