How do I plot a choropleth or thematic map using ggplot2 from a KML data source?

Example KML: https://dl.dropbox.com/u/1156404/nhs_pct.kml

Example data: https://dl.dropbox.com/u/1156404/nhs_dent_stat_pct.csv

Here's what I've got so far:



#Look up the list of layers

#The KML file was originally grabbed from Google Fusion Tables
#There's only one layer...but we still need to identify it
kml=readOGR(fn,layer='Fusiontables folder')

#This seems to work for plotting boundaries:

#And this:
ggplot(kk, aes(x=long, y=lat,group=group))+ geom_polygon()

#Add some data into the mix
nhs <- read.csv("nhs_dent_stat_pct.csv")


#I think I can plot against this data using plot()?
#But is that actually doing what I think it's doing?!
#And if so, how can experiment using other colour palettes?

#But the real question is: HOW DO I DO COLOUR PLOTS USING gggplot?
ggplot(kk, aes(x=long, y=lat,group=group)) #+ ????

So my question is: how do I use eg kml@data$A.30.Sep.2012 values to colour the regions?

And as a supplementary question: how might I then experiment with different colour palettes, again in the ggplot context?

  • I'm a little confused as to why this question is deemed as off-topic, whereas something like stackoverflow.com/questions/12341281/… presumably is not? Because I should have RTFM (which I hadn't actually discovered before it was referred to in the first answer)? Or becuase it is rambling and conflates 2 questions (colouring using ggplot and then selecting various different colour palettes?) – psychemedia Dec 12 '12 at 18:40
  • @ripped-off you probably closed this by mistake, this is a 100% valid R question. – Moody_Mudskipper Dec 11 '19 at 15:16

Plotting maps in R is very often a pain. Here's an answer which largely follows Hadley's tutorial at https://github.com/hadley/ggplot2/wiki/plotting-polygon-shapefiles


nhs <- read.csv("nhs_dent_stat_pct.csv")

kml <- readOGR(fn, layer="Fusiontables folder")

Note: I got a message about orphan holes. I included the following line after reading https://stat.ethz.ch/pipermail/r-help/2011-July/283281.html

slot(kml, "polygons") <- lapply(slot(kml, "polygons"), checkPolygonsHoles)

## The rest more or less follows Hadley's tutorial 
kml.points = fortify(kml, region="Name")
kml.df = merge(kml.points, kml@data, by.x="id",by.y="Name",sort=FALSE)
kml.df <- merge(kml.df,nhs,by.x="id",by.y="PCT.ONS.CODE",sort=FALSE,all.x=T,all.y=F)

## Order matters for geom_path!
kml.df <- kml.df[order(kml.df$order),]

nhs.plot <- ggplot(kml.df, aes(long,lat,group=group,fill=A.30.Sep.2012)) + 
  geom_polygon() +
  geom_path(color="gray") +
  coord_equal() +
  scale_fill_gradient("The outcome") + 
    scale_x_continuous("") + scale_y_continuous("") +   theme_bw()
  • Great - thanks... I hadn't seen that tutorial. Thanks for pointing out the holes thing too - this geo stuff is all pretty new to me, and I'm not yet clear about what I can and can't ignore/need to handle;-) – psychemedia Dec 7 '12 at 22:28

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