RelimpPCR - Relative Importance PCA Regression
Performs Principal Components Analysis (also known as PCA)
dimensionality reduction in the context of a linear regression.
In most cases, PCA dimensionality reduction is performed
independent of the response variable for a regression. This
captures the majority of the variance of the model's
predictors, but may not actually be the optimal dimensionality
reduction solution for a regression against the response
variable. An alternative method, optimized for a regression
against the response variable, is to use both PCA and a
relative importance measure. This package applies PCA to a
given data frame of predictors, and then calculates the
relative importance of each PCA factor against the response
variable. It outputs ordered factors that are optimized for
model fit. By performing dimensionality reduction with this
method, an individual can achieve a the same r-squared value as
performing just PCA, but with fewer PCA factors. References:
Yuri Balasanov (2017) <https://ilykei.com>.