Overview
Explore fundamental concepts of statistical machine learning in this 44-minute lecture focusing on PAC (Probably Approximately Correct) learnability and its agnostic counterpart. Delve into the theoretical foundations that underpin machine learning algorithms, examining how PAC learning frameworks apply to modern deep learning systems. Master key principles of generalization theory while understanding their practical limitations in deep neural networks. Gain valuable insights into the mathematical foundations of machine learning, including statistical learning principles, PAC learnability concepts, and the challenges of applying these theoretical frameworks to contemporary deep learning applications.
Syllabus
Ali Ghodsi, Deep Learning, PAC Learnability in Deep Learning, Fall 2023, Lecture 20
Taught by
Data Science Courses