Question

Sorry for not included any example data for my problem. I couldn’t find a way to easily produce an example shape file. Hopefully, experienced users of ggplot can see what I’d like to do from the description below.

I’ve got:

  • A data.frame X with information about sample plots (plotid, var1, var2, var3, var4, …)

  • A polygon shapefile Y with spatial information for the sample plots

Importation of the shapefile Y (with maptools) and fortifying as data.frame Z (ggplot2) works fine. melting X to X_melted works equally fine. merge-ing Z and X_melted to mapdf works as well.

That means that now we have a data.frame in long form with spatial information and var1, var2, var3, …

Now I want to plot this data frame like this:

pl1 <- ggplot(mapdf,aes(long,lat),group=group)
pl1 <- pl1 + geom_polygon(aes(group=group,fill=value),colour="black")
pl1 <- pl1 + facet_grid(variable ~ .)
pl1 <- pl1 + coord_equal(ratio = 1)
pl1

The result is a nice plot with one panel for each variable. The maps of the panels are identical, but fill colour varies with the values of the variables. Up to now, everything works like a charm… with one problem:

The variables have different min and max values. For example var1 goes from 0 to 5, var2 from 0 to 400, var3 from 5 to 10, etc. In that example, the legend for the fill colour goes from 0 to 400. var2 is nicely drawn, but var1 and var3 are basically in the same colour.

Is there a way I could use a different legend for each panel of the facet? Or is this simply not (yet) possible with facet_wrap or facet_grid in ggplot?

I could make individual plots for each variable and join them with viewports, but there a plenty of variables and this would be a lot of work.

Or is there maybe another package or method I could use to accomplish what I’d like to do?

And help would be very much appreciated. :)

Edit: With the help of the ggplot2-package description, I constructed an example that illustrates my problem:

ids <- factor(c("1.1", "2.1", "1.2", "2.2", "1.3", "2.3"))
values <- data.frame(
id = ids,
val1 = cumsum(runif(6, max = 0.5)),
val2 = cumsum(runif(6, max = 50))
)
positions <- data.frame(
id = rep(ids, each = 4),
x = c(2, 1, 1.1, 2.2, 1, 0, 0.3, 1.1, 2.2, 1.1, 1.2, 2.5, 1.1, 0.3,
0.5, 1.2, 2.5, 1.2, 1.3, 2.7, 1.2, 0.5, 0.6, 1.3),
y = c(-0.5, 0, 1, 0.5, 0, 0.5, 1.5, 1, 0.5, 1, 2.1, 1.7, 1, 1.5,
2.2, 2.1, 1.7, 2.1, 3.2, 2.8, 2.1, 2.2, 3.3, 3.2)
)

values <- melt(values)
datapoly <- merge(values, positions, by=c("id"))

p <- ggplot(datapoly, aes(x=x, y=y)) + geom_polygon(aes(fill=value, group=id),colour="black")
p <- p + facet_wrap(~ variable)
p

The panel on the right illustrates different values for var2 on the map. On the panel on the left however, all polygons have the same colour. This is logical, because only one colour gradient is used for all panels. Could I use a different colour gradient for each panel?

Was it helpful?

Solution

Currently there can be only one scale per plot (for everything except x and y).

OTHER TIPS

With grid goodness

align.plots <- function(..., vertical=TRUE){
#http://ggextra.googlecode.com/svn/trunk/R/align.r
  dots <- list(...)
  dots <- lapply(dots, ggplotGrob)
  ytitles <- lapply(dots, function(.g) editGrob(getGrob(.g,"axis.title.y.text",grep=TRUE), vp=NULL))
  ylabels <- lapply(dots, function(.g) editGrob(getGrob(.g,"axis.text.y.text",grep=TRUE), vp=NULL))
  legends <- lapply(dots, function(.g) if(!is.null(.g$children$legends))
                    editGrob(.g$children$legends, vp=NULL) else ggplot2:::.zeroGrob)

  gl <- grid.layout(nrow=length(dots))
  vp <- viewport(layout=gl)
  pushViewport(vp)
  widths.left <- mapply(`+`, e1=lapply(ytitles, grobWidth),
                        e2= lapply(ylabels, grobWidth), SIMPLIFY=F)
  widths.right <- lapply(legends, function(g) grobWidth(g) + if(is.zero(g)) unit(0, "lines") else unit(0.5, "lines")) # safe margin recently added to ggplot2
  widths.left.max <- max(do.call(unit.c, widths.left))
  widths.right.max <- max(do.call(unit.c, widths.right))

  for(ii in seq_along(dots)){
    pushViewport(viewport(layout.pos.row=ii))
    pushViewport(viewport(x=unit(0, "npc") + widths.left.max - widths.left[[ii]],
                          width=unit(1, "npc") - widths.left.max + widths.left[[ii]] -
                                                 widths.right.max + widths.right[[ii]],
                          just="left"))
    grid.draw(dots[[ii]])
  upViewport(2)
  }
}



p <- ggplot(datapoly[datapoly$variable=="val1",], aes(x=x, y=y)) + geom_polygon(aes(fill=value, group=id),colour="black")
p1 <- ggplot(datapoly[datapoly$variable=="val2",], aes(x=x, y=y)) + geom_polygon(aes(fill=value, group=id),colour="black")
align.plots( p,p1)

At the risk of stating the obvious, it seems like you should be coloring by percents instead of raw values. Then your transformed values and your legend go from 0 to 1.

Perhaps a little unorthodox, but you could try factoring your "value". For example:

p <- ggplot(datapoly, aes(x=x, y=y)) + geom_polygon(aes(fill=factor(value), group=id),colour="black")
p <- p + facet_wrap(~ variable)
p

ggplot2 uses factors to create legends. So if you could add a column that takes "value" and breaks it into factored ranges, you could replace "value" with the ranges.

Create a column, like "f":

    id variable        value   x    y f
1  1.1     val1   0.09838607 2.0 -0.5 0.09-0.13
2  1.1     val1   0.09838607 1.0  0.0 0.09-0.13
3  1.1     val1   0.09838607 1.1  1.0 0.09-0.13
4  1.1     val1   0.09838607 2.2  0.5 0.09-0.13
25 2.1     val1   0.13121347 1.0  0.0 0.13-0.20

...

Then use:

p <- ggplot(datapoly, aes(x=x, y=y)) + geom_polygon(aes(fill=f, group=id),colour="black")
p <- p + facet_wrap(~ variable)
p

You'd have to specify the categories that you want, which could be time consuming. But at least the graph would come out how you want it to. Basically, you'd be recoding the data into another column. Here are some examples:

http://www.statmethods.net/management/variables.html

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