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FOLDS seminar: A New Paradigm for Learning with Distribution Shift
October 16, 2025 at 12:00 PM - 1:00 PM
Zoom link: https://upenn.zoom.us/j/98220304722
We revisit the fundamental problem of learning with distribution shift, where a learner is given labeled samples from training distribution D, unlabeled samples from test distribution D′ and is asked to output a classifier with low test error. The standard approach in this setting is to prove a generalization bound in terms of some notion of distance between D and D′. These distances, however, are difficult to compute, and this has been the main stumbling block for efficient algorithm design over the last two decades.
We sidestep this issue and define a new model called TDS learning, where a learner runs a test on the training set and is allowed to reject if this test detects distribution shift relative to a fixed output classifier. This approach leads to the first set of efficient algorithms for learning with distribution shift that do not take any assumptions on the test distribution. Finally, we discuss how our techniques have recently been used to solve longstanding problems in supervised learning with contamination.
Adam Klivans
Professor at UT-Austin and director of IFML, the NSF AI Institute for Foundations of Machine Learning
Adam Klivans is a computer science professor at UT-Austin and director of IFML, the NSF AI Institute for Foundations of Machine Learning. He also founded the UT-Austin Center for Generative AI, which is powered by a new GPU cluster among the largest in academia. His research interests include the theory of machine learning as well as AI for protein engineering.