Ruth Urner headshot

Ruth Urner

Faculty Member

Associate Professor, Department of Electrical Engineering and Computer Science, Lassonde School of Engineering, York University

Ruth Urner is an associate professor at York University in Toronto, Canada. Previous to joining York University, she was a senior research scientist at the Max Planck Institute for intelligent systems in Tübingen, Germany, and a postdoctoral fellow at Carnegie Mellon’s Machine Learning department as well as at Georgia Tech. She received her PhD from the University of Waterloo for a thesis on statistical learning theory in 2013. She regularly serves as a senior program committee member of the major machine learning and learning theory conferences, such as NeurIPS, ICML, ALT and COLT, and serves as the local co-chair for ALT 2026 in Toronto.

Her research develops mathematical tools and frameworks for analyzing the possibilities and limitations of machine learning. She is particularly interested in developing formal foundations for aspects of machine learning that relate to evaluation methods and societal impacts, such as human interpretability, uncertainty quantification, robustness and fairness.

Research Interests

  • Computational and Statistical Learning Theory
  • Adversarial and strategic robustness
  • Interpretability and fairness
  • Evaluation methods for unsupervised learning

Highlights

  • Simons-Berkeley Fellowship, spring 2017 (with Google Research Fellowship industry endorsement)
  • Best paper award at Workshop on Transfer and Multitask Learning @ NIPS 2015