Determine Highly Correlated Variables
This function searches through a correlation matrix and returns a vector of integers corresponding to columns to remove to reduce pair-wise correlations.
FindCorr(x, cutoff = .90, verbose = FALSE)
x |
A correlation matrix |
cutoff |
A numeric value for the pair-wise absolute correlation cutoff |
verbose |
A boolean for printing the details |
The absolute values of pair-wise correlations are considered. If two variables have a high correlation, the function looks at the mean absolute correlation of each variable and removes the variable with the largest mean absolute correlation.
There are several function in the subselect package that can also be used to accomplish the same goal. However the package was removed from CRAN and available in the archives.
A vector of indices denoting the columns to remove. If no correlations meet the criteria, numeric(0)
is returned.
Original R code by Dong Li, modified by Max Kuhn
Max Kuhn. Contributions from Jed Wing, Steve Weston, Andre Williams, Chris Keefer, Allan Engelhardt, Tony Cooper, Zachary Mayer and the R Core Team (2014). caret: Classification and Regression Training. R package version 6.0-35. https://cran.r-project.org/package=caret
corrMatrix <- diag(rep(1, 5)) corrMatrix[2, 3] <- corrMatrix[3, 2] <- .7 corrMatrix[5, 3] <- corrMatrix[3, 5] <- -.7 corrMatrix[4, 1] <- corrMatrix[1, 4] <- -.67 corrDF <- expand.grid(row = 1:5, col = 1:5) corrDF$correlation <- as.vector(corrMatrix) PlotCorr(xtabs(correlation ~ ., corrDF), las=1, border="grey") FindCorr(corrMatrix, cutoff = .65, verbose = TRUE) FindCorr(corrMatrix, cutoff = .99, verbose = TRUE) # d.pizza example m <- cor(data.frame(lapply(d.pizza, as.numeric)), use="pairwise.complete.obs") FindCorr(m, verbose = TRUE) m[, FindCorr(m)]
Please choose more modern alternatives, such as Google Chrome or Mozilla Firefox.