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1) Is there any R library/function which would implement INTELLIGENT label placement in R plot? I tried some but they are all problematic - many labels are overlaping either each other or other points (or other objects in the plot, but I see that this is much harder to handle).

2) If not, is there any way how to COMFORTABLY help the algorithm with the label placement for particular problematic points? Most comfortable and efficient solution wanted.

You can play and test other possibilities with my reproducible example and see if you are able to achieve better results than I have:

# data
x = c(0.8846, 1.1554, 0.9317, 0.9703, 0.9053, 0.9454, 1.0146, 0.9012, 
0.9055, 1.3307)
y = c(0.9828, 1.0329, 0.931, 1.3794, 0.9273, 0.9605, 1.0259, 0.9542, 
0.9717, 0.9357)
ShortSci = c("MotAlb", "PruMod", "EriRub", "LusMeg", "PhoOch", "PhoPho", 
"SaxRub", "TurMer", "TurPil", "TurPhi")

# basic plot
plot(x, y, asp=1)
abline(h = 1, col = "green")
abline(v = 1, col = "green")

For labelling, I then tried these possibilities, no one is really good:

1) this one is terrible:

text(x, y, labels = ShortSci, cex= 0.7, offset = 10)

2) this one is good if you don't want to place labels for all points, but just for the outliers, but still, the labels are often placed wrong:

identify(x, y, labels = ShortSci, cex = 0.7)

3) this one looked promissing but there is the problem of labels being too close to the points; I had to pad them with spaces but this doesn't help much:

pointLabel(x, y, labels = paste("  ", ShortSci, "  ", sep=""), cex=0.7)


thigmophobe.labels(x, y, labels = ShortSci, cex=0.7, offset=0.5)


textxy(x, y, labs=ShortSci, cx=0.7)

6) For ggplot2 graphs, there is a newish option called ggrepel which many people seem to like.

EDIT: todo: try labcurve {Hmisc}.

share|improve this question
Answers to R questions seem, unfortunately, to be evenly split between StackOverflow and CrossValidated. In this case, the question is a duplicate of one from 4 days ago over there. – Ed Staub Sep 30 '11 at 15:32
I ran into a similar problem and wrote a basic package that uses force field simulation to adjust object location. While much improvement is possible, including integration with ggplot, etc. it seems to get the task accomplished. The following illustrates the functionality. If someone runs into the issue and searches for an answer, hopefully this will be of some assistance: install.packages("FField") library(FField) FFieldPtRepDemo() – gregk Jun 27 '13 at 0:19
Could I ask you to try ggrepel? – Kamil Slowikowski Feb 2 at 14:32

First, here's the results of my solution to this problem:

enter image description here

I did this by hand in Preview (very basic PDF/image viewer on OS X) in just a few minutes. (Edit: The workflow was exactly what you'd expect: I saved the plot as a PDF from R, opened it in Preview and created textboxes with the desired labels (9pt Helvetica) and then just dragged them around with my mouse until they looked good. Then I exported to a PNG for uploading to SO.)

Now, before you succumb to the strong urge to down vote this into oblivion and leave snarky comments about how the point is to automate this process, hear me out!

Looking for algorithmic solutions is totally fine, and (IMHO) really interesting. But, to me, point labeling situations fall into roughly three categories:

  1. You have a small number of points, none which are terribly close together. In this case, one of the solutions you listed in the question is likely to work with fairly minimal tweaking.
  2. You have a small number of points, some of which are too closely packed for the typical algorithmic solutions to give good results. In this case, since you only have a small number of points, labeling them by hand (either with an image editor or fine-tuning your call to text) isn't that much effort.
  3. You have a fairly large number of points. In this case, you really shouldn't be labeling them anyway, since it's hard to process large numbers of labels visually.

:climbing onto soapbox:

Since folks like us love automation, I think we often fall into the trap of thinking that nearly every aspect of producing a good statistical graphic ought to be automated. I respectfully (humbly!) disagree.

There is no perfectly general statistical plotting environment that automagically creates the picture you have in your head. Things like R, ggplot2, lattice etc. do most of the work; but that extra little bit of tweaking, adding a line here, adjusting a margin there, is probably better suited to a different tool.

:climbing down from soapbox:

I would also note that I think we could all come up with scatterplots with <10-15 points that will be nearly impossible to cleanly label, even by hand, and these will likely break any automatic solution someone comes up with.

Finally, I want to reiterate that I know this isn't the answer you're looking for. And I'm not saying that algorithmic attempts are useless or dumb. I up-voted this question, and will happily upvote interesting algorithmic solutions!

The reason I posted this answer is that I think this question ought to be the canonical "point labeling in R" question for future duplicates, and I think solutions involving hand-labeling deserve a seat at the table, that's all.

share|improve this answer
Another manual way is to save the plot as an SVG and edit it using Inkscape, then produce PDF from that. – Spacedman Sep 30 '11 at 15:08
Hi joran, thanks for your answer. OK, I accept this solution, although I think the computer should do this best first AND THEN request manual intervention. Here I'm looking for most comfortable and fast solution. Could you please describe how you made the plot, step by step? What you generated in R, export, moving the labels in Preview, etc.? – TMS Sep 30 '11 at 15:11
@TomasT. I agree, like I said, just offering another option. Also, you might find this question useful if you want to build your own automated approach. – joran Sep 30 '11 at 15:18
@TomasT. Oh I see. In that case I "cheated", kind of. I generated one pdf with labels using one of your methods above and one without and used the one with labels as a guide. – joran Sep 30 '11 at 15:39
+1 This is a great answer. Some explanation of why appears on meta-CV: see the comments there. – whuber Sep 30 '11 at 20:40

Have you tried the directlabels package?

And, BTW, the pos and offset arguments can take vectors to allow you to get them in the right positions when there are a reasonable number of points in just a few runs of plot.

share|improve this answer
can you tell us (or better still, the package maintainer) what problems? Works for me. – Spacedman Sep 30 '11 at 15:12
Upgrade your R - it might even upgrade the labelling packages you have tried and give you better results! – Spacedman Sep 30 '11 at 16:11
Can the directlabels package be used with normal plot() plot? I was not successful trying so... Thanks! PS: @SpacedMan & Ben, I cleaned up my comments regarding R update, since they are not so much interesting - you can do the same. – TMS Sep 30 '11 at 21:53
no, only lattice and ggplot2 – John Sep 30 '11 at 23:14
up vote 5 down vote accepted

I found some solution! It's not ultimate and ideal unfortunatelly, but it's the one that works the best for me now. It's half algoritmic, half manual, so it saves time compared to pure manual solution sketched by joran.

I overlooked very important part of the ?identify help!

The algorithm used for placing labels is the same as used by text if pos is specified there, the difference being that the position of the pointer relative the identified point determines pos in identify.

So if you use the identify() solution as I wrote in my question, then you can affect the position of the label by not clicking directly on that point, but by clicking next to that point relatively in the desired direction!!! Works just great!

The downside is that there are only 4 positions (top, left, bottom, right), but I'd more appreciate the other 4 (top-left, top-right, bottom-left, bottom-right)... So I use this to labels points where it doesn't bother me and the rest of the points I label directly in my Powerpoint presentation, as joran proposed :-)

P.S.: I haven't tried the directlabels lattice/ggplot solution yet, I still prefer to use the basic plot library.

share|improve this answer

ggrepel looks promising when applied to ggplot2 scatterplots.

# data
x = c(0.8846, 1.1554, 0.9317, 0.9703, 0.9053, 0.9454, 1.0146, 0.9012, 
0.9055, 1.3307)
y = c(0.9828, 1.0329, 0.931, 1.3794, 0.9273, 0.9605, 1.0259, 0.9542, 
0.9717, 0.9357)
ShortSci = c("MotAlb", "PruMod", "EriRub", "LusMeg", "PhoOch", "PhoPho", 
"SaxRub", "TurMer", "TurPil", "TurPhi")

df <- data.frame(x = x, y = y, z = ShortSci)

ggplot(data = df, aes(x = x, y = y)) + theme_bw() + 

    geom_text_repel(aes(label = z), 
       box.padding = unit(0.45, "lines")) +

    geom_point(colour = "green", size = 3)

enter image description here

share|improve this answer

I'd suggest you take a look at the wordcloud package. I know this package focuses not exactly on the points but on the labels themselves, and also the style seems to be rather fixed. But still, the results I got from using it were pretty stunning. Also note that the package version in question was released about the time you asked the question, so it's still very new.

share|improve this answer

Not an answer, but too long for a comment. A very simple approach that can work on simple cases, somewhere between joran's post-processing and the more sophisticated algorithms that have been presented is to make in-place simple transformations to the dataframe.

I illustrate this with ggplot2 because I'm more familiar with that syntax than base R plots.

df <- data.frame(x = x, y = y, z = ShortSci)
ggplot(data = df, aes(x = x, y = y, label = z)) + theme_bw() + 
    geom_point(shape = 1, colour = "green", size = 5) + 
    geom_text(data = within(df, c(y <- y+.01, x <- x-.01)), hjust = 0, vjust = 0)

As you can see, in this instance the result is not ideal, but it may be good enough for some purposes. And it is quite effortless, typically something like this is enough within(df, y <- y+.01)

enter image description here

share|improve this answer
Rather than modify the df using within, I often do this by adjusting the aesthetics: geom_text(aes(x = x - .01, y = y + .01), hjust = 0, vjust = 0) seems cleaner. – Gregor Dec 29 '14 at 21:48

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