Overview
Explore the fundamental concepts of computational learning theory in this university lecture, focusing on the PAC (Probably Approximately Correct) model of learning and its theoretical foundations. Delve into the principles of PAC learning while examining its relationship with computational learning theory. Gain insights into Occam's razor theorem and understand its significance in machine learning applications. Learn how these theoretical frameworks contribute to the broader understanding of machine learning algorithms and their effectiveness in real-world scenarios.
Syllabus
Machine Learning: Lecture 13: PAC learning
Taught by
UofU Data Science