Seminar: Machine Learning Seminar

ECE Women Community

Learning invariant models for out-of-domain generalization: good news and bad news

Date: February,14,2024 Start Time: 10:30 - 11:30
Location: 1061, Meyer Building
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Lecturer: Uri Shalit
I will present work showing how a robust notion of model calibration ties into the idea of invariant learning, and leads to models that can generalize out-of-domain (OOD) in both theory and practice. I will then show how practical difficulties with optimizing the above models lead us to a new result with ramifications for OOD generalization, fairness and robustness: We prove how โ€œbenign overfittingโ€, where deep models interpolate the training set yet generalize well, can be fundamentally at odds with learning invariant models.
Uri Shalit is an associate professor at the Technion – Israel Institute of Technology. Previously, Uri was a postdoctoral researcher in Prof. David Sontagโ€™s Clinical Machine Learning Lab at NYU and then MIT.

 

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