I have a correlation matrix $P_{i,j}$ which is $1000 \times 1000$. Given the data the matrix will have rectangular patches of very high correlations. That is, if you draw a $20 \times 20$ square anywhere in this matrix you will either be looking at a patch of highly correlated variables ($\rho_{i,j}> 0.8$) or medium to uncorrelated ($\in [-0.1, 0.5]$). The reason for this is the structure of the data.

How do I represent this graphically? I know of one way to visualize a matrix like this but it only works for small dimensions:

```
install.packages("plotrix")
library(plotrix)
rhoMat = array(rnorm(1000*1000),dim=c(1000,1000))
color2D.matplot(rhoMat[1:10,1:10],cs1=c(0,0.01),cs2=c(0,0),cs3=c(0,0)) #nice!
color2D.matplot(rhoMat,cs1=c(0,0.01),cs2=c(0,0),cs3=c(0,0)) #broken!
```

What is a function or algorithm that would plot a red area if in that vicinity in the matrix $P_{i,j}$, correlations "tend to" be high, versus "tending" to be low (even better if it switches from one colour to another as we move from positive to negative correlation patches). I want something to see how many patches of high correlations there are and whether one patch is correlated to another patch at a different place in the dataset.

I only want to do it in `R`

.