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Often some data.frame contains 20+ variables and you want to get a first overview (of the correlation structure). Even on a 30" screen you run quickly out of space and it remains hard to grasp the message. Are there any established strategies to highlight what's important? I am aware this question is somewhat general, but I wondered over and over again and never had the panacea to cure it. And yup, I heard of summary.

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+1 Great question, great answers! –  Ed Staub Sep 29 '11 at 12:55
    
Adding to Dirk's answers I found one more link oga-lab.net/RGM2/func.php?rd_id=MKmisc:corPlot –  Matt Bannert Sep 29 '11 at 14:40
    
There's a guy around here who knows something about dendograms. :) This is another useful approach. –  Iterator Sep 29 '11 at 14:58
    
Who dat? :) . I like them, too but often find it pretty cumbersome to label them nicely and it's a little counterintuitive where to cut them. Maybe I just lack the experience. But yes, I am willing to learn more... –  Matt Bannert Sep 29 '11 at 15:16
    
It's Andrie, but I haven't seen him around. I believe he has a package for dendograms, but he or someone else may be able to suggest where to begin. –  Iterator Sep 29 '11 at 15:24

5 Answers 5

up vote 8 down vote accepted

I have used heatmap() (or, rather, the underlying image() function) for that purpose. I do not have the code handy anymore, and as I recall I had to fiddle with the colormap to get something that made sense for the [-1, 1] range.

Here is a simple example:

R> set.seed(42)
R> X <- matrix(rnorm(100*20), nrow=100)
R> XC <- cor(X)
R> image(XC)        # color range could do with improvements here

correlation as image() plot

You play further tricks by blanking one lower or upper triangle and putting text there. The PerformanceAnalytics package has a function chart.Correlation() that does that (from the raw data matrix) but it is much slower and will not scale to large matrices as per your original question. I am sure there are others...

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Thx! Now that I see it start to remember there was a nice example that even involved basketball flowingdata.com/2010/01/21/… . Do you have any suggestions for labels like that ? –  Matt Bannert Sep 29 '11 at 13:25
    
Sorry, I don't understand your question. The post you linked to has the complete walkdown of what they did, and yes, it also invoved heatmap() and image(). –  Dirk Eddelbuettel Sep 29 '11 at 13:36
    
yup you are right. When I posted the initial question. I forget about the post. When I saw your graphic it all came back to. Visual recognition :) . Plus, The question seemed interesting to other people and further concept (like angles) came up). Yet you're right the subquestion in the comment was dumb. –  Matt Bannert Sep 29 '11 at 13:50

Well I just have to post about my own package here:)

You can use qgraph to visualize a correlation matrix as a network. This will plot variables as nodes and correlations as edges connecting the nodes. Green edges indicate positive correlations and red edges indicate negative correlations. The wider and more saturated the edges the stronger the absolute correlation.

For example (this is the first example from the help page), the following code will plot the correlation matrix of a 240 variable dataset.

library("qgraph")
data(big5)
data(big5groups)
qgraph(cor(big5),minimum=0.25,cut=0.4,vsize=2,groups=big5groups,legend=TRUE,borders=FALSE)
title("Big 5 correlations",line=-2,cex.main=2)

enter image description here

You can also cluster strongly correlated nodes together (uses Fruchterman-Reingold) which creates quite a clear image of what the structure of your correlation matrix actually looks like:

enter image description here

And alot more. For some more examples take a look at my site:

http://sachaepskamp.com/?page_id=73

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+1 for this looks just striking. This is art man. Very uncommon yet to me, but worth looking at it. Somehow it reminds a bit of factor analysis with these groups, but I definitely need to RTFM. Thanks for posting! –  Matt Bannert Sep 29 '11 at 19:32

What about doing a PCA on the correlation matrix? Then the angle between variables show their correlation.

library(HSAUR)
heptathlon
round(cor(heptathlon[,-8]),2)   # correlations [without score]

require(vegan)
PCA <-  rda(heptathlon[,-8], scale=TRUE)   # run a PCA
biplot(PCA, display = "species")   # correlation biplot
#  The angles between descriptors in the biplot reflect their correlations

enter image description here

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Can you provide a link or two describing this? I tried the Wikipedia page, but between its denseness and mine, not much information flowed. –  Ed Staub Sep 29 '11 at 13:02
    
Nice, my question was general. But of course I also had a particular problem in mind. In this case I am trying to create find out which a lags are suitable to be included a factor analysis without only putting more load on the respective "original" factor. However, the angles are a very nice idea +1. Why don't you use princompor aren't you talkin about principle components? –  Matt Bannert Sep 29 '11 at 13:06
    
princomp() will give the same result as rda(). I just used rda() since I´m working at the moment with the (great) vegan-package. –  EDi Sep 29 '11 at 13:42
    
Links: stackexchange and Holland –  EDi Sep 29 '11 at 13:53

With pairs you can generate some scatterplot matrices quickly. If too many variables are present you could use on of the tools of Rattle:

enter image description here Other examples at: http://rattle.togaware.com/rattle-screenshots.html

In fact rattle itself does not do most of the analysis (as dwin pointed out correctly), but it offers (imho) easy tools to quickly run a pca, correlation tree, correlation matrix like above without having to manipulate your dataset to make sure that eg only numeric variables are present in the dataset, ...

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Hmm, tried rattle long ago but it didn't rattle, maybe time to consider it again. Your screenshot looks decent though. –  Matt Bannert Sep 29 '11 at 13:03
2  
That screenshot can also be seen in Sarkar's 'Lattice' book, so it doesn't require rattle. See figures 13.5 and 13.6 in lmdvr.r-forge.r-project.org/figures/figures.html –  BondedDust Sep 29 '11 at 13:16

Often, the column structure of a matrix can be presented in a random order. In that case, I'd look to do some reordering. For visualizing and working with sparse matrices, I often do some sort of reordering, such as Reverse Cuthill-McKee or some other form of bandwidth reordering, and this could be applied to other contexts to make visualizations easier.

For a correlation matrix, you can squash low magnitude correlations (e.g. within (-eps,+eps)) to create sparsity, then reorder to examine the structure.

What is nice is if you can find blocks of related objects. This reordering plus the heatmaps (using one color gradient for negative correlation, another for positive correlation) can be very helpful.

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I like the make is sparse to detect relevant structure idea. Sometimes we want high, low or near-zero though. Care to cook up some code? ;-) –  Dirk Eddelbuettel Sep 29 '11 at 14:32
    
@DirkEddelbuettel What makes you think I know how to cook up R code? :) I will take a look. My matrix reordering code isn't in R, but I see that there are some packages that offer it. –  Iterator Sep 29 '11 at 14:54

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