I gave a short talk on explanability at the Virginia Journal of Social Policy and the Law Symposium on Artificial Intelligence at UVA Law School, 21 February 2025.
Our research seeks to empower individuals and organizations to control how their data is used. We use techniques from cryptography, programming languages, machine learning, operating systems, and other areas to both understand and improve the privacy and security of computing as practiced today, and as envisioned in the future. A major current focus is on adversarial machine learning.
Inference Privacy
Security ML
Auditing ML Systems
Can we explain AI model outputs?
Une expérience immersive et enrichissante
I had a chance to talk (over zoom) about visual cryptography to students in an English class in a French high school in Spain!
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Reassessing EMNLP 2024’s Best Paper: Does Divergence-Based Calibration for Membership Inference Attacks Hold Up?
Anshuman Suri and Pratyush Maini wrote a blog about the EMNLP 2024 best paper award winner: Reassessing EMNLP 2024’s Best Paper: Does Divergence-Based Calibration for Membership Inference Attacks Hold Up?.
As we explored in Do Membership Inference Attacks Work on Large Language Models?, to test a membership inference attack it is essentail to have a candidate set where the members and non-members are from the same distribution. If the distributions are different, the ability of an attack to distinguish members and non-members is indicative of distribution inference, not necessarily membership inference.
The post describes experiments showing that the PatentMIA used in the EMNLP paper provides a false measure of membership inference.
Common Way To Test for Leaks in Large Language Models May Be Flawed
UVA News has an article on our LLM membership inference work: Common Way To Test for Leaks in Large Language Models May Be Flawed: UVA Researchers Collaborated To Study the Effectiveness of Membership Inference Attacks, Eric Williamson, 13 November 2024.
Meet Professor Suya!
Meet Assistant Professor Fnu Suya. His research interests include the application of machine learning techniques to security-critical applications and the vulnerabilities of machine learning models in the presence of adversaries, generally known as trustworthy machine learning. pic.twitter.com/8R63QSN8aO
— EECS (@EECS_UTK) October 7, 2024