I wonder how one can add another layer of important and needed complexity to a matrix correlation heatmap like for example the p value after the manner of the significance level stars in addition to the R2 value (-1 to 1)?

It was NOT INTENDED in this question to put significance level stars OR the p values as text on each square of the matrix BUT rather to show this in a graphical out-of-the-box representation of significance level on each square of the matrix. I think only those who enjoy the blessing of INNOVATIVE thinking can win the applause to unravel this kind of solution in order to have the best way to represent that added component of complexity to our "half-of-the-truth matrix correlation heatmaps". I googled a lot but never seen a proper or I shall say an "eye-friendly" way to represent the significance level PLUS the standard color shades that reflect the R coefficient.

The reproducible data set is found here:

http://learnr.wordpress.com/2010/01/26/ggplot2-quick-heatmap-plotting/

The R code please find below:

```
library(ggplot2)
library(plyr) # might be not needed here anyway it is a must-have package I think in R
library(reshape2) # to "melt" your dataset
library (scales) # it has a "rescale" function which is needed in heatmaps
library(RColorBrewer) # for convenience of heatmap colors, it reflects your mood sometimes
nba <- read.csv("http://datasets.flowingdata.com/ppg2008.csv")
nba <- as.data.frame(cor(nba[2:ncol(nba)])) # convert the matrix correlations to a dataframe
nba <- data.frame(row=rownames(nba),nba) # create a column called "row"
rownames(nba) <- NULL #get rid of row names
nba <- melt(nba)
nba.m$value<-cut(nba.m$value,breaks=c(-1,-0.75,-0.5,-0.25,0,0.25,0.5,0.75,1),include.lowest=TRUE,label=c("(-0.75,-1)","(-0.5,-0.75)","(-0.25,-0.5)","(0,-0.25)","(0,0.25)","(0.25,0.5)","(0.5,0.75)","(0.75,1)")) # this can be customized to put the correlations in categories using the "cut" function with appropriate labels to show them in the legend, this column now would be discrete and not continuous
nba.m$row <- factor(nba.m$row, levels=rev(unique(as.character(nba.m$variable)))) # reorder the "row" column which would be used as the x axis in the plot after converting it to a factor and ordered now
po.nopanel <- list(opts(panel.background=theme_blank(),panel.grid.minor=theme_blank(),panel.grid.major=theme_blank())) # useful to get rid of grids of plot taken from https://gist.github.com/1035189/ac763cb4480c7b522483fa90ed0865d66593737c
#now plotting
ggplot(nba.m, aes(row, variable)) +
geom_tile(aes(fill=value),colour="black") +
scale_fill_brewer(palette = "RdYlGn",name="Correlation") + # here comes the RColorBrewer package, now if you ask me why did you choose this palette colour I would say look at your battery charge indicator of your mobile for example your shaver, won't be red when gets low? and back to green when charged? This was the inspiration to choose this colour set.
opts(axis.text.x=theme_text(angle=-90))+
po.nopanel
```

The matrix correlation heatmap should look like this:

Hints and ideas to enhance the solution:

- This code might be useful to have an idea about the significance level stars taken from this website:

http://ohiodata.blogspot.de/2012/06/correlation-tables-in-r-flagged-with.html

R code:

```
mystars <- ifelse(p < .001, "***", ifelse(p < .01, "** ", ifelse(p < .05, "* ", " "))) # so 4 categories
```

- The significance level can be added as colour intensity to each square like alpha aesthetics but I don't think this will be easy to interpret and to capture

- Another idea would be to have 4 different sizes of squares corresponding to the stars, of course giving the smallest to the non significant and increases to a full size square if highest stars

- Another idea to include a circle inside those significant squares and the thickness of the line of the circle corresponds to the level of significance (the 3 remaining categories) all of them of one colour

- Same as above but fixing the line thickness while giving 3 colours for the 3 remaining significant levels

- May be you come up with better ideas, who knows?

Thanks a lot and wish you all the best in this endevour!

`arm::corrplot`

function with ggplot2: rpubs.com/briatte/ggcorr – Fr. Mar 17 '13 at 21:02`GGally`

package, with corrections and additions by the maintainer of the package. – Fr. Apr 14 '13 at 23:08