Tutorial on principal component analysis, with applications in R

12/08/2021
by   Henk van Elst, et al.
0

This tutorial reviews the main steps of the principal component analysis of a multivariate data set and its subsequent dimensional reduction on the grounds of identified dominant principal components. The underlying computations are demonstrated and performed by means of a script written in the statistical software package R.

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