# How to combine 4 pairs plots in one single figure?

in advance I am sorry if I am bothering you with trivial questions.

I should made 1 figure which contains 4 different correlation pairwise plots. The look of wanted graph can be seen as follows:

Every single pairwise plot I am making with function pairs():

``````pairs(cbind(AAPL,MSFT,INTC,FB,MU,IBM),main="Frequency=1 Min.",font.labels = 2, col="blue",pch=16, cex=0.8, cex.axis=1.5,las=1)
pairs(cbind(AAPL,MSFT,INTC,FB,MU,IBM),main="Frequency = 2 Min.",font.labels = 2, col="blue",pch=16, cex=0.8, cex.axis=1.5,las=1)
pairs(cbind(AAPL,MSFT,INTC,FB,MU,IBM),main="Frequency = 5 Min.",font.labels = 2, col="blue",pch=16, cex=0.8, cex.axis=1.5,las=1)
pairs(cbind(AAPL,MSFT,INTC,FB,MU,IBM),main="Frequency = 10 Min.",font.labels = 2, col="blue",pch=16, cex=0.8, cex.axis=1.5,las=1)
``````

When I combine above pairwise plots through usage of layout function, it is not working (as far as I understood from similar questions layout() and pairs() cannot be combined).

If anyone has an elegant way to combine 4 different correlation pairwise plots, the help would be greatly appreciated.

• Try par(mfrow=c(2,2)) before the plots. Usually this is used to make a grid of plots. – Avinash Jul 31 '14 at 10:29
• Or `layout(matrix(1:4, nrow=2))`. – Thomas Jul 31 '14 at 10:48
• I think `pairs()` overrides the `mfrow` setting. – ilir Jul 31 '14 at 11:04
• I'm happy to troubleshoot your specific problem if you provide a reproducible example. – Eric Fail Jul 31 '14 at 12:52

### Update, 12014-07-31 11:48:35Z

As ilir pointed out below `pairs` somehow overwrites `par`, most likely for some good reason.

@user44037, can you solve your problem working form this code snippet? Copy/pasted from here. I believe the solution can be found using `splom` from `lattice`. take a look at `?splom`.

`````` library(lattice)
splom(~iris[1:3]|Species, data = iris,
layout=c(2,2), pscales = 0,
varnames = c("Sepal\nLength", "Sepal\nWidth", "Petal\nLength"),
page = function(...) {
ltext(x = seq(.6, .8, len = 4),
y = seq(.9, .6, len = 4),
lab = c("@user44037,", "can you solve your", "problem working form ", "this code snippet?"),
cex = 1)
})
``````

Simply following Avinash directions by copy/pasting code from the website Quick-R. Feel free to improve on this example.

I'm happy to troubleshoot your specific problem if you provide a reproducible example.

``````# 4 figures arranged in 2 rows and 2 columns
attach(mtcars)
par(mfrow=c(2,2))
plot(wt,mpg, main="Scatterplot of wt vs. mpg")
plot(wt,disp, main="Scatterplot of wt vs disp")
hist(wt, main="Histogram of wt")
boxplot(wt, main="Boxplot of wt")
``````

• Try that with `pairs(iris)` and you will see it does not work. – ilir Jul 31 '14 at 11:36
• Eric Fail, thank you for splom code. Unfortunately, I do not know how to run it on my data. I have 24 time series, belonging to 4 independent groups (4 Pirwise correlation plots): Frequency = 1 Min. , with belonging time series AAPL_1m,MSFT_1m,INTC_1m,FB_1m,MU_1m,IBM_1m. Frequency = 2 Min. , with belonging time series AAPL_2m,MSFT_2m,INTC_2m,FB_2m,MU_2m,IBM_2m.Frequency = 5 Min. , with belonging time series AAPL_5m,MSFT_5m,INTC_5m,FB_5m,MU_5m,IBM_5m. Frequency = 10 Min. , with belonging time series AAPL_10m,MSFT_10m,INTC_10m,FB_10m,MU_10m,IBM_10m. Each pairwise plot should show correlation – Robin Hood Aug 1 '14 at 8:11
• I also shared a new question regarding the application of splom() function in combination of 4 pairwise plots (stackoverflow.com/questions/25076293/…) – Robin Hood Aug 1 '14 at 8:51
• It would be helpful if you could provide us with a reproducible example. That way we can be much more focused when we try to help you. We avoid wasting your time and you avoid wasting our time. – Eric Fail Aug 1 '14 at 8:57
• Also, now that you have posted a new question, I think you should decide if this question is answered or where you want to take it from here. – Eric Fail Aug 1 '14 at 8:58

The problem is solved by using of splom() function as Eric Fail suggested:

The solution can be found here.

The answer to this question might help: Create a matrix of scatterplots (pairs() equivalent) in ggplot2

you could create the pairs plots using `ggpairs` in the `GGgalley` package. Since these should then be ggplot objects you could arrange them using `grid.arrange` in the `gridExtra` package.