Selective Amnesia - On Efficient, High-Fidelity and Blind Suppression of Backdoor Effects in Trojaned Machine Learning Models
Offered By: IEEE via YouTube
Course Description
Overview
Explore a 15-minute IEEE conference talk on efficient, high-fidelity, and blind suppression of backdoor effects in trojaned machine learning models. Delve into the concept of "Selective Amnesia" presented by researchers from Indiana University Bloomington, including Rui Zhu, Di Tang, Siyuan Tang, XiaoFeng Wang, and Haixu Tang. Learn about innovative techniques to mitigate backdoor vulnerabilities in ML models while maintaining their performance and functionality.
Syllabus
On Efficient, High-Fidelity and Blind Suppression of Backdoor Effects in Trojaned ML Models
Taught by
IEEE Symposium on Security and Privacy
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