Learn about Singular Value Decomposition (SVD) in this detailed mathematics lecture that explores fundamental concepts, visualization techniques, and practical applications. Master the process of tracing vector paths and understand the principles behind rank-k approximation while developing a deeper intuition for matrix decomposition methods. Delve into mathematical theory and practical examples that illuminate how SVD works and its importance in data analysis and dimensionality reduction.
Overview
Syllabus
FoDA F22 Lecture 19
Taught by
UofU Data Science