Can GGPLOT make 2D summaries of data?

I wish to plot mean (or other function) of reaction time as a function of the location of the target in the x y plane. As test data:

``````library(ggplot2)
xs <- runif(100,-1,1)
ys <- runif(100,-1,1)
rts <- rnorm(100)
testDF <- data.frame("x"=xs,"y"=ys,"rt"=rts)
``````

I know I can do this:

``````p <- ggplot(data = testDF,aes(x=x,y=y))+geom_bin2d(bins=10)
``````

What I would like to be able to do, is the same thing but plot a function of the data in each bin rather than counts. Can I do this?

Or do I need to generate the conditional means first in R (e.g. `drt <- tapply(testDF\$rt,list(cut(testDF\$x,10),cut(testDF\$y,10)),mean)`) and then plot that?

Thank you.

-

This turned out to be harder than I expected.

You can almost trick ggplot into doing this, by providing a `weights` aesthetic, but that only gives you the sum of the weights in the bin, not the mean (and you have to specify `drop=FALSE` to retain negative bin values). You can also retrieve either counts or density within a bin, but neither of those really solves the problem.

Here's what I ended up with:

``````## breaks vector (slightly coarser than the 10x10 spec above;
##   even 64 bins is a lot for binning only 100 points)
bvec <- seq(-1,1,by=0.25)

## helper function
tmpf <- function(x,y,z,FUN=mean,breaks) {
mids <- list(x=midfun(breaks\$x),y=midfun(breaks\$y))
tt <- tapply(z,list(cut(x,breaks\$x),cut(y,breaks\$y)),FUN)
mt <- melt(tt)
## factor order gets scrambled (argh), reset it
mt\$X1  <- factor(mt\$X1,levels=rownames(tt))
mt\$X2  <- factor(mt\$X2,levels=colnames(tt))
transform(X,
x=mids\$x[mt\$X1],
y=mids\$y[mt\$X2])
}

ggplot(data=with(testDF,tmpf(x,y,rt,breaks=list(x=bvec,y=bvec))),
aes(x=x,y=y,fill=value))+
geom_tile()+
scale_x_continuous(expand=c(0,0))+   ## expand to fill plot region
scale_y_continuous(expand=c(0,0))
``````

This assumes equal bin widths, etc., could be extended ... it really is too bad that (as far as I can tell) `stat_bin2d` doesn't accept a user-specified function.

-
I get "object 'X' not found", and when I change the X to x in `transform()`, I get "Error in eval(expr, envir, enclos) : object 'mids' not found". –  Ari B. Friedman Jul 26 '11 at 18:02

Update With the release of ggplot2 0.9.0, much of this functionality is covered by the new additions of `stat_summary2d` and `stat_summary_bin`.

here is a gist for this answer: https://gist.github.com/1341218

here is a slight modification of stat_bin2d so as to accept arbitrary function:

``````StatAggr2d <- proto(Stat, {
objname <- "aggr2d"
default_aes <- function(.) aes(fill = ..value..)
required_aes <- c("x", "y", "z")
default_geom <- function(.) GeomRect

calculate <- function(., data, scales, binwidth = NULL, bins = 30, breaks = NULL, origin = NULL, drop = TRUE, fun = mean, ...) {

range <- list(
x = scales\$x\$output_set(),
y = scales\$y\$output_set()
)

# Determine binwidth, if omitted
if (is.null(binwidth)) {
binwidth <- c(NA, NA)
if (is.integer(data\$x)) {
binwidth[1] <- 1
} else {
binwidth[1] <- diff(range\$x) / bins
}
if (is.integer(data\$y)) {
binwidth[2] <- 1
} else {
binwidth[2] <- diff(range\$y) / bins
}
}
stopifnot(is.numeric(binwidth))
stopifnot(length(binwidth) == 2)

# Determine breaks, if omitted
if (is.null(breaks)) {
if (is.null(origin)) {
breaks <- list(
fullseq(range\$x, binwidth[1]),
fullseq(range\$y, binwidth[2])
)
} else {
breaks <- list(
seq(origin[1], max(range\$x) + binwidth[1], binwidth[1]),
seq(origin[2], max(range\$y) + binwidth[2], binwidth[2])
)
}
}
stopifnot(is.list(breaks))
stopifnot(length(breaks) == 2)
stopifnot(all(sapply(breaks, is.numeric)))
names(breaks) <- c("x", "y")

xbin <- cut(data\$x, sort(breaks\$x), include.lowest=TRUE)
ybin <- cut(data\$y, sort(breaks\$y), include.lowest=TRUE)

if (is.null(data\$weight)) data\$weight <- 1
ans <- ddply(data.frame(data, xbin, ybin), .(xbin, ybin), function(d) data.frame(value = fun(d\$z)))

within(ans,{
xint <- as.numeric(xbin)
xmin <- breaks\$x[xint]
xmax <- breaks\$x[xint + 1]

yint <- as.numeric(ybin)
ymin <- breaks\$y[yint]
ymax <- breaks\$y[yint + 1]
})
}
})

stat_aggr2d <- StatAggr2d\$build_accessor()
``````

and usage:

``````ggplot(data = testDF,aes(x=x,y=y, z=rts))+stat_aggr2d(bins=3)
ggplot(data = testDF,aes(x=x,y=y, z=rts))+
stat_aggr2d(bins=3, fun = function(x) sum(x^2))
``````

As well, here is a slight modification of stat_binhex:

``````StatAggrhex <- proto(Stat, {
objname <- "aggrhex"

default_aes <- function(.) aes(fill = ..value..)
required_aes <- c("x", "y", "z")
default_geom <- function(.) GeomHex

calculate <- function(., data, scales, binwidth = NULL, bins = 30, na.rm = FALSE, fun = mean, ...) {
try_require("hexbin")
data <- remove_missing(data, na.rm, c("x", "y"), name="stat_hexbin")

if (is.null(binwidth)) {
binwidth <- c(
diff(scales\$x\$input_set()) / bins,
diff(scales\$y\$input_set() ) / bins
)
}

try_require("hexbin")

x <- data\$x
y <- data\$y

# Convert binwidths into bounds + nbins
xbnds <- c(
round_any(min(x), binwidth[1], floor) - 1e-6,
round_any(max(x), binwidth[1], ceiling) + 1e-6
)
xbins <- diff(xbnds) / binwidth[1]

ybnds <- c(
round_any(min(y), binwidth[1], floor) - 1e-6,
round_any(max(y), binwidth[2], ceiling) + 1e-6
)
ybins <- diff(ybnds) / binwidth[2]

# Call hexbin
hb <- hexbin(
x, xbnds = xbnds, xbins = xbins,
y, ybnds = ybnds, shape = ybins / xbins,
IDs = TRUE
)
value <- tapply(data\$z, hb@cID, fun)

# Convert to data frame
data.frame(hcell2xy(hb), value)
}

})

stat_aggrhex <- StatAggrhex\$build_accessor()
``````

and usage:

``````ggplot(data = testDF,aes(x=x,y=y, z=rts))+stat_aggrhex(bins=3)
ggplot(data = testDF,aes(x=x,y=y, z=rts))+
stat_aggrhex(bins=3, fun = function(x) sum(x^2))
``````

-
+1 Thank you for posting this. I shall study this carefully because I tried to make this modification but was unsuccessful. –  Andrie Nov 5 '11 at 14:15
+1 This looks great! Perhaps it'd be worth changing `function(x)` to `function(z)` in the usage examples for clarity. –  shujaa Nov 5 '11 at 22:35
@kohske: Just a note. Your formula and example seems to be not adjusted for those without your level of expertise. –  Paulo Cardoso Mar 26 '13 at 23:09