# How do I plot a cross correlation matrix for timeseries?

I have a timeseries representation of my data as follows (without the row and column) annotations:

``````      L1 L2 L3 L4
t=1    0  1  1  0
t=2    0  1  1  1
t=3    1  0  1  1
t=4    0  1  1  0
``````

I am reading this into R as:

``````timeseries = read.table("./test", header=F)
``````

I am plotting timeseries for L1 using

``````ts.plot(timeseries\$V1)
``````

and plotting the cross-correlation function as:

``````ccf(timeseries\$V1, timeseries\$V2)
``````

Now, can someone please tell me how do I plot a cross correlation matrix that shows the output of this function for L1-L4? Basically, something like this (in my case, a 4x4 matrix of plots):

-
should this be sent to cross validate? –  wespiserA Aug 5 '11 at 22:34
Hmm.. may I ask why? This is a question related to plotting in `R` which has its own language. –  Legend Aug 5 '11 at 22:35
Are you just looking for a way to plot each `ccf` of each pair of columns on a single plot? –  joran Aug 5 '11 at 22:43
@joran: Yes! Exactly. I updated my question to show an example. –  Legend Aug 5 '11 at 22:47
Ok, I gave a very basic way to do this. But I'd be patient and wait for some more eyeballs, cause it's quite possible that there's a function buried in one of the time series packages (`zoo`, `xts`) that does something similar in a prettier fashion. –  joran Aug 5 '11 at 22:50

There seems to be another trivial way of doing it!

``````timeseries = read.table("./test", header=F)
acf(timeseries)
``````

gives me a matrix of correlation plots. Of course, there are other options that can be passed to `acf` if a covariance is needed.

-

Try this where `M` is as in joran's post:

``````pnl <- function(x, y = x) { par(new = TRUE); ccf(x, y) }
pairs(as.data.frame(M), upper.panel = pnl, diag.panel = pnl, cex.labels = 1)
``````
-

A trivial way of doing this is to simply create a matrix of plots on your plotting device and place each `ccf` plot in one by one:

``````M <- matrix(sample(0:1,40,replace = TRUE),nrow = 10)

par(mfrow= c(4,4))
for (i in 1:4){
for (j in 1:4){
ccf(M[,i],M[,j])
}
}
``````

But if you wait around a bit, someone who knows the time series packages more intimately may swing by with a function that does this a bit more nicely.

-
+1 Great! Thank you. I'll probably wait for half-a-day. If nothing else comes by, I'll accept this. Thank you. –  Legend Aug 5 '11 at 22:52