View source: R/findCorrelation.R
findCorrelation | R Documentation |
This function searches through a correlation matrix and returns a vector of integers corresponding to columns to remove to reduce pair-wise correlations.
findCorrelation(
x,
cutoff = 0.9,
verbose = FALSE,
names = FALSE,
exact = ncol(x) < 100
)
x |
A correlation matrix |
cutoff |
A numeric value for the pair-wise absolute correlation cutoff |
verbose |
A boolean for printing the details |
names |
a logical; should the column names be returned ( |
exact |
a logical; should the average correlations be recomputed at each step? See Details below. |
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.
Using exact = TRUE
will cause the function to re-evaluate the average
correlations at each step while exact = FALSE
uses all the
correlations regardless of whether they have been eliminated or not. The
exact calculations will remove a smaller number of predictors but can be
much slower when the problem dimensions are "big".
There are several function in the subselect package
(leaps
,
genetic
,
anneal
) that can also be used to accomplish
the same goal but tend to retain more predictors.
A vector of indices denoting the columns to remove (when names
= TRUE
) otherwise a vector of column names. If no correlations meet the
criteria, integer(0)
is returned.
Original R code by Dong Li, modified by Max Kuhn
leaps
,
genetic
,
anneal
, findLinearCombos
R1 <- structure(c(1, 0.86, 0.56, 0.32, 0.85, 0.86, 1, 0.01, 0.74, 0.32,
0.56, 0.01, 1, 0.65, 0.91, 0.32, 0.74, 0.65, 1, 0.36,
0.85, 0.32, 0.91, 0.36, 1),
.Dim = c(5L, 5L))
colnames(R1) <- rownames(R1) <- paste0("x", 1:ncol(R1))
R1
findCorrelation(R1, cutoff = .6, exact = FALSE)
findCorrelation(R1, cutoff = .6, exact = TRUE)
findCorrelation(R1, cutoff = .6, exact = TRUE, names = FALSE)
R2 <- diag(rep(1, 5))
R2[2, 3] <- R2[3, 2] <- .7
R2[5, 3] <- R2[3, 5] <- -.7
R2[4, 1] <- R2[1, 4] <- -.67
corrDF <- expand.grid(row = 1:5, col = 1:5)
corrDF$correlation <- as.vector(R2)
levelplot(correlation ~ row + col, corrDF)
findCorrelation(R2, cutoff = .65, verbose = TRUE)
findCorrelation(R2, cutoff = .99, verbose = TRUE)
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