
A Universal Law of Robustness via Isoperimetry with Sebastien Bubeck - #551
The TWIML AI Podcast (formerly This Week in Machine Learning & Artificial Intelligence)
00:00
Exploring Isoperimetry and Its Implications
This chapter explores isoperimetry and its historical roots, as well as its applications in higher-dimensional optimization and functions with multiple parameters. It discusses key concepts such as over-parameterization and the law of robustness, illustrated through real-world examples like label noise in image datasets. The conversation also examines the connections between isoperimetry and neural networks, addressing challenges in scaling training methods and the philosophical implications of these insights.
Transcript
Play full episode