A tutorial on Principal Components Analysis

"This tutorial is designed to give the reader an understanding of Principal Components Analysis (PCA). PCA is a useful statistical technique that has found application in fields such as face recognition and image compression, and is a common technique for finding patterns in data of high dimension. Before getting to a description of PCA, this tutorial first introduces mathematical concepts that will be used in PCA. It covers standard deviation, covariance, eigenvectors and eigenvalues. This background knowledge is meant to make the PCA section very straightforward, but can be skipped if the concepts are already familiar."
Written by Lindsay I Smith

Read full tutorial at http://bit.ly/MU8WV7

Thanks. Nice paper. Just wonder why she went with Matlab.

Very Good Info!! Thanks for sharing

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