While producing scatter plots of many points in R (using ggplot() for example), there might be many points that are behind the others and not visible at all. For instance see the plot below:

enter image description here

This is a scatter plot of several hundreds of thousands points, but most of them are behind the other points. The problem is when casting the output to a vector file (a PDF file for example), the invisible points make the file size so big, and increase memory and cpu usage while viewing the file.

A simple solution is to cast the output to a bitmap picture (TIFF or PNG for example), but they lose the vector quality and can be even larger in size. I tried some online PDF compressors, but the result was the same size as my original file.

Is there any good solution? For example some way to filter the points that are not visible, possibly during generating plot or after it by editing PDF file?

  • 4
    The recommended solution is a hexbin plot. However, in a hexbin plot colour indicates the number of values in each bin and you seem to use colour for something else. – Roland May 21 '13 at 8:43
  • +1 for hexbin. Other options are sunflowerplot and the bigvis package: github.com/hadley/bigvis – Ben May 21 '13 at 9:06
  • @Roland Yes, as you guessed the colors of points are meaningful, so for my case hexbin is not a good solution – Ali May 21 '13 at 9:21
  • If the colour has meaning, how would you like to handle points of different colour hiding behind each other? I don't think this is a good plot. – Roland May 21 '13 at 9:39
  • 1
    I'm a bit skeptical that 'hidden' points are not important. If that's really true, you should remove them from your analysis at some earlier point. I tend to recommend using partial transparency for this sort of plot, e.g. color = #FF00FF44 so that you get an idea of the density of data points. – Carl Witthoft May 21 '13 at 11:55

As a start you can do something like this:

DF <- data.frame(x=x<-runif(1e6),y=x+rnorm(1e6,sd=0.1))

enter image description here

PDF size: 6334 KB

DF2 <- data.frame(x=round(DF$x,3),y=round(DF$y,3))
DF2 <- DF[!duplicated(DF2),]
#[1] 373429

enter image description here

PDF size: 2373 KB

With the rounding you can control how many values you want to remove. You only need to modify this to handle the different colours.

  • 1
    We may first divide the X and Y values to the minimum horizontal/vertical distance we desire between the points, round it and then filter out duplicates: temp <- round(DF2 / .1); DF2 <- DF2[!duplicated(temp),] – Ali May 21 '13 at 11:32
  • +1 for the great idea of rounding! This was extremely great solution, reduced my PDF size considerably. Thank a lot – Ali May 21 '13 at 11:45

Simply saving the plot as a high-res png file will very drastically cut the size, while keeping the quality more than good enough. At least I've never had journals complain about any of the png's I sent them, just keep sure to use > 600 dpi.


I think it might be done with some post-processing of the pdf-file. In linux, if I have to reduce a pdf, I would do

pdf2ps input.pdf output.ps
ps2pdf output.ps output.pdf

which for some reason works quite efficiently.

You can see some discussion at https://askubuntu.com/questions/113544/how-to-reduce-pdf-filesize.

  • Thanks, but they are exactly the same size, possibly because the initial PDF file is a vector and not bitmap file. I tried several solutions of your ask-ubuntu link. – Ali May 21 '13 at 10:16

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