# Visualize 2-variable joint probability mass function in R

I have a matrix in R that represents the joint probability mass function (pmf) of two variables, for example:

``````> matrix(c(.13, .00004, 0, 0, 0, .04, .13, .008, 0, 0, .01, .007, .16, .02, .0004, .004, .025, .070, .14, .01, .001, .007, .028, .028, .12), nrow=5)
[,1]  [,2]   [,3]  [,4]  [,5]
[1,] 0.13000 0.040 0.0100 0.004 0.001
[2,] 0.00004 0.130 0.0070 0.025 0.007
[3,] 0.00000 0.008 0.1600 0.070 0.028
[4,] 0.00000 0.000 0.0200 0.140 0.028
[5,] 0.00000 0.000 0.0004 0.010 0.120
``````

I'd like to create a 2D visualization of this data as a square divided up into 5x5 smaller squares, where the color of the individual square is proportional to the entry in the matrix. (In the case above, it would be darkest along the diagonal). Is there a simple way to generate this type of image?

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What is a "pmf"? Can you clarify this in your Q title and text for those not down with the lingo? – Gavin Simpson Apr 5 '11 at 16:41
@Gavin Simpson: I edited the title and the text, hopefully it's a little bit clearer. – Lorin Hochstein Apr 7 '11 at 4:01

ggplot can handle this pretty easily. I know of two easy methods for doing this:

``````library(ggplot2)
dat <- matrix(c(.13, .00004, 0, 0, 0, .04, .13, .008, 0, 0, .01, .007, .16, .02, .0004, .004, .025, .070, .14, .01, .001, .007, .028, .028, .12), nrow=5)
ggfluctuation(as.table(dat), type = "colour") +
scale_fill_gradient(low = "white", high = "blue")

#Or with geom_tile
dat.m <- melt(dat)

ggplot(dat.m, aes(X1, X2, fill = value)) +
geom_tile(colour = "grey") + scale_fill_gradient(low = "white", high = "blue")
``````

For completeness, here's a lattice solution (also easy):

``````library(lattice)
levelplot(dat)
``````
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Try this:

``````library(lattice)

#Build the data
x <- matrix(c(.13, .00004, 0, 0, 0, .04, .13, .008, 0, 0, .01, .007, .16, .02, .0004, .004, .025, .070, .14, .01, .001, .007, .028, .028, .12), nrow=5)
xmin <- min(x)
xmax <- max(x)

#Build the plot
pal <- colorRampPalette(c("lightblue", "blue"), space = "rgb")
levelplot(x, main="5 X 5 Levelplot", xlab="", ylab="", col.regions=pal(120), cuts=100, at=seq(xmin, xmax, (xmax-xmin)/20))
``````

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The `image()` function can be used:

``````mat <- matrix(c(.13, .00004, 0, 0, 0,
.04, .13, .008, 0, 0,
.01, .007, .16, .02, .0004,
.004, .025, .070, .14, .01,
.001, .007, .028, .028, .12), nrow=5)
image(mat, col = rev(heat.colors(12)))
``````

but you need to come up with the correct colour scheme to fill each class/bin. Here I just reverse the default to get darker colours for the high values. But there are better ways.

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