# Plot correlation matrix into a graph

I have a matrix with some correlation values. Now I want to plot that in a graph that looks more or less like that:

How can I achieve that?

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You might find this function interesting : gist.github.com/low-decarie/5886616 though it still needs to be improved (stackoverflow.com/questions/17370853/…) –  Etienne Low-Décarie Jun 28 '13 at 18:00

Quick, dirty, and in the ballpark:

``````library(lattice)

#Build the horizontal and vertical axis information
hor <- c("214", "215", "216", "224", "211", "212", "213", "223", "226", "225")
ver <- paste("DM1-", hor, sep="")

#Build the fake correlation matrix
nrowcol <- length(ver)
cor <- matrix(runif(nrowcol*nrowcol, min=0.4), nrow=nrowcol, ncol=nrowcol, dimnames = list(hor, ver))
for (i in 1:nrowcol) cor[i,i] = 1

#Build the plot
rgb.palette <- colorRampPalette(c("blue", "yellow"), space = "rgb")
levelplot(cor, main="stage 12-14 array correlation matrix", xlab="", ylab="", col.regions=rgb.palette(120), cuts=100, at=seq(0,1,0.01))
``````

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It looks very similar to example from OP (fonts, colors, layout). Looks like original was created with lattice too. Great detailed answer, +1. –  Marek Mar 28 '11 at 5:16

That type of graph is called a "heat map" among other terms. Once you've got your correlation matrix, plot it using one of the various tutorials out there.

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I'm not sure if calling it a 'heatmap' is a fairly modern invention. It seems to make sense if you are trying to show 'hotspots' by using a red-orange-yellow colour scheme, but in general its just an image plot, or a matrix plot, or a raster plot. I'll be interested to find the oldest reference that calls it a 'heatmap'. tldr; "[citation needed]" –  Spacedman Mar 28 '11 at 7:04
I think you're right that heat map isn't necessarily the earliest name for it. Wikipedia lists a 1957 paper, but I checked that paper and the term "heat map" appears nowhere in it (nor do the graphics look exactly like the current form). –  Ari B. Friedman Mar 28 '11 at 11:48

The ggplot2 library can handle this with `geom_tile()`. It looks like there may have been some rescaling done in that plot above as there aren't any negative correlations, so take that into consideration with your data. Using the `mtcars` dataset:

``````library(ggplot2)
library(reshape)

z <- cor(mtcars)
z.m <- melt(z)

ggplot(z.m, aes(X1, X2, fill = value)) + geom_tile() +
scale_fill_gradient(low = "blue",  high = "yellow")
``````

EDIT:

``````ggplot(z.m, aes(X1, X2, fill = value)) + geom_tile() +
scale_fill_gradient2(low = "blue",  high = "yellow")
``````

allows to specify the colour of the midpoint and it defaults to white so may be a nice adjustment here. Other options can be found on the ggplot website here and here.

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nice (+1)! Though I would add a manual-break scale (e.g: `c(-1, -0.6, -0.3, 0, 0.3, 0.6, 1)`) with `"white"` in the middle to let the colors reflect the symmetry of the correlation efficient. –  daroczig Mar 28 '11 at 0:33
@Daroczig - Good point. It looks like `scale_fill_gradient2()` achieves the functionality you describe automatically. I didn't know that existed. –  Chase Mar 28 '11 at 1:52
@jeromy - thanks for adding the plots, nice improvement. Cheers. –  Chase Oct 2 '12 at 4:28

Rather "less" look like, but worth checking (as giving more visual information):

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Very easy with lattice::levelplot:

``````z <- cor(mtcars)
require(lattice)
levelplot(z)
``````

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Use the corrplot package:

``````library(corrplot)
data(mtcars)
M <- cor(mtcars)
##  different color series
col1 <- colorRampPalette(c("#7F0000","red","#FF7F00","yellow","white",
"cyan", "#007FFF", "blue","#00007F"))
col2 <- colorRampPalette(c("#67001F", "#B2182B", "#D6604D", "#F4A582", "#FDDBC7",
"#FFFFFF", "#D1E5F0", "#92C5DE", "#4393C3", "#2166AC", "#053061"))
col3 <- colorRampPalette(c("red", "white", "blue"))
col4 <- colorRampPalette(c("#7F0000","red","#FF7F00","yellow","#7FFF7F",
"cyan", "#007FFF", "blue","#00007F"))
wb <- c("white","black")

## different color scale and methods to display corr-matrix
corrplot(M, method="number")
corrplot(M)
corrplot(M, order ="AOE")

corrplot(M, order="AOE", col=col2(200))

corrplot(M, order="AOE", col=col3(100))
corrplot(M, order="AOE", col=col3(10))

corrplot(M, method="color", col=col1(20), cl.length=21,order = "AOE", addCoef.col="grey")

if(TRUE){

corrplot(M, method="square", col=col2(200),order = "AOE")

corrplot(M, method="ellipse", col=col1(200),order = "AOE")

corrplot(M, method="pie", order = "AOE")

## col=wb
corrplot(M, col = wb, order="AOE", outline=TRUE, addcolorlabel="no")
## like Chinese wiqi, suit for either on screen or white-black print.
corrplot(M, col = wb, bg="gold2",  order="AOE", addcolorlabel="no")
}
``````

Rather elegant IMO

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