Anqi Liu, “Towards Trustworthy AI: Distributionally Robust Learning under Data Shift”

/ August 9, 2021/

When:
November 16, 2021 @ 12:00 pm – 1:00 pm
2021-11-16T12:00:00-05:00
2021-11-16T13:00:00-05:00

Anqi Liu

Assistant Professor, Computer Science

Johns Hopkins University

 

Title:Towards Trustworthy AI: Distributionally Robust Learning under Data Shift

Abstract:

The unprecedented prediction accuracy of modern machine learning beckons for its application in a wide range of real-world applications, including autonomous robots, fine-grained computer vision, scientific experimental design, and many others. In order to create trustworthy AI systems, we must safeguard machine learning methods from catastrophic failures and provide calibrated uncertainty estimates. For example, we must account for the uncertainty and guarantee the performance for safety-critical systems, like autonomous driving and health care, before deploying them in the real world. A key challenge in such real-world applications is that the test cases are not well represented by the pre-collected training data.  To properly leverage learning in such domains, especially safety-critical ones, we must go beyond the conventional learning paradigm of maximizing average prediction accuracy with generalization guarantees that rely on strong distributional relationships between training and test examples.

In this talk, I will describe a distributionally robust learning framework that offers accurate uncertainty estimation and rigorous guarantees under data distribution shift. This framework yields appropriately conservative yet still accurate predictions to guide real-world decision-making and is easily integrated with modern deep learning.  I will showcase the practicality of this framework in applications on agile robotic control and computer vision.  I will also introduce a survey of other real-world applications that would benefit from this framework for future work.

 

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