Abstract Linear Algebra II
Principal Component Analysis (PCA) is a statistical technique used to simplify complex datasets by transforming them into a new set of variables called principal components, which capture the most variance in the data. This method relies heavily on linear algebra concepts like eigenvalues and eigenvectors, allowing for dimensionality reduction while preserving as much information as possible.
congrats on reading the definition of Principal Component Analysis. now let's actually learn it.