Overview
Explore the fundamental concepts of Principal Component Analysis (PCA) in this 27-minute video tutorial. Dive into variance and covariance, eigenvectors and eigenvalues, and practical applications of PCA. Learn through a visual approach with minimal formulas and abundant illustrations. Understand dimensionality reduction using housing data examples, grasp the importance of mean and variance, and delve into covariance matrices and linear transformations. Discover the significance of eigenvalues and eigenvectors in PCA, and gain insights into how this technique can be applied to real-world data analysis problems.
Syllabus
Introduction
Taking a picture
Dimensionality Reduction
Housing Data
Mean
Variance?
Covariance matrix
Linear Transformations
Eigenstuff
Eigenvalues
Eigenvectors
Principal Component Analysis PCA
Thank you!
Taught by
Serrano.Academy