18

I need to apply cut on a continuous variable to show it with a Brewer color scale in ggplot2, as in Setting breakpoints for data with scale_fill_brewer() function in ggplot2. The continuous variable is a relative difference, and I'd like to format the data as "18.2 %" instead of "0.182". Is there an easy way to achieve this?

x <- runif(100)
levels(cut(x, breaks=10))

[1] "(0.0223,0.12]" "(0.12,0.218]"  "(0.218,0.315]" "(0.315,0.413]"
[5] "(0.413,0.511]" "(0.511,0.608]" "(0.608,0.706]" "(0.706,0.804]"
[9] "(0.804,0.901]" "(0.901,0.999]"

I'd like, e.g., the first level to appear as (2.23 %, 12 %]. Is there a better alternative to cut?

1
  • 1
    +1 for clear question title, reproducible code and clear goal of what is desired. People could learn from this post. Jan 22, 2013 at 11:01

6 Answers 6

18

I have implemented cut_format() in version 0.2-3 of my kimisc package, version 0.3 is on CRAN now.

# devtools::install_github("krlmlr/kimisc")
x <- seq(0.1, 0.9, by = 0.2)

breaks <- seq(0, 1, by = 0.25)

cut(x, breaks)
## [1] (0,0.25]   (0.25,0.5] (0.25,0.5] (0.5,0.75] (0.75,1]  
## Levels: (0,0.25] (0.25,0.5] (0.5,0.75] (0.75,1]

cut_format(x, breaks, format_fun = scales::percent)
## [1] (0%, 25%]   (25%, 50%]  (25%, 50%]  (50%, 75%]  (75%, 100%]
## Levels: (0%, 25%] (25%, 50%] (50%, 75%] (75%, 100%]

It's still not perfect, passing the number of breaks (as in the original example) doesn't work yet.

0
10

Use gsub with some regex after multiplying your original data by 100:

gsub("([0-9.]+)","\\1%",levels(cut(x*100,breaks=10)))
 [1] "(0.449%,10.4%]" "(10.4%,20.3%]"  "(20.3%,30.2%]"  "(30.2%,40.2%]"  "(40.2%,50.1%]"  "(50.1%,60%]"    "(60%,69.9%]"    "(69.9%,79.9%]"  "(79.9%,89.8%]"  "(89.8%,99.7%]"
3
  • Just hacked a similar thing, too. I thought there must be a better way :-)
    – krlmlr
    Jan 22, 2013 at 10:46
  • I think it's probably the easiest way since, the multiply by 100 step would be hard to do once you've created the text labels.
    – James
    Jan 22, 2013 at 10:48
  • I was thinking about something along cut(x, labels=function(lo, hi) paste0(...))...
    – krlmlr
    Jan 22, 2013 at 11:05
6

Why not copy the code for cut.default and create your own version with modified levels? See this gist.

Two lines were changed:

Line 22: ch.br <- formatC(breaks, digits = dig, width = 1) changed to ch.br <- formatC(breaks*100, digits = dig, width = 1).

Line 29: else "[", ch.br[-nb], ",", ch.br[-1L], if (right) changed to else "[", ch.br[-nb], "%, ", ch.br[-1L], "%", if (right)

The rest is the same. And here it is in action:

library(devtools)
source_gist(4593967)

set.seed(1)
x <- runif(100)
levels(cut2(x, breaks=10))
#  [1] "(1.24%, 11%]"   "(11%, 20.9%]"   "(20.9%, 30.7%]" "(30.7%, 40.5%]" "(40.5%, 50.3%]"
#  [6] "(50.3%, 60.1%]" "(60.1%, 69.9%]" "(69.9%, 79.7%]" "(79.7%, 89.5%]" "(89.5%, 99.3%]"
1
  • I have managed to do it using a one-line change only: gist.github.com/4594243. However, this loses the space after the ,, for which a second parameter to cut would be required. Will propose extending R's cut.default if nothing else comes up.
    – krlmlr
    Jan 22, 2013 at 12:29
3

A new answer to an oldish question.

You could use the label argument to pass a function to format the labels. I will use gsubfn and scales::percent

library(gsubfn)
library(scales)
pcut <- function(x) gsubfn('\\d\\.\\d+', function(x) percent(as.numeric(x)),xx)
d <- data.frame(x=runif(100))

ggplot(d,aes(x=x,y=seq_along(x))) + 
 geom_point(aes(colour = cut(x, breaks = 10))) + 
 scale_colour_brewer(name = 'x', palette = 'Spectral', label = pcut)

enter image description here

3
  • Thanks for your input, that is indeed another nice option. I have just posted my thoughts about the complications with binning data here: stackoverflow.com/a/17438591/946850. The main issue is that the data, the cutting algorithm, the number of breaks and the palette all influence each other, but are scattered around several different function calls. Shouldn't this be part of an R package, what do you think?
    – krlmlr
    Jul 3, 2013 at 2:14
  • @krlmlr Yes, but I usually go down the scale_colour_gradientn road eg ggplot(d,aes(x=x,y=seq_along(x))) + geom_point(aes(colour = x)) + scale_colour_gradientn(colours = brewer.pal('Spectral',n=10), label = percent) -- which will kill some kittens.
    – mnel
    Jul 3, 2013 at 2:29
  • Yes, and of course there's even a pull request that addresses this, which then must be sort of a kitten killer machine. I was considering using that, but now I find the discretization/cutting/binning approach clearer. It's just that, currently, there seems to be no neat notation for this.
    – krlmlr
    Jul 3, 2013 at 6:37
2

My package cutr does very similar things to @krlmlr's function (that I didn't know up until now).

cutf is just cut with a format_fun argument, and ... which is passed to format_fun, not cut as incut_format.

smart_cut has more features and different defaults :

devtools::install_github("moodymudskipper/cutr")
library(cutr)

x <- seq(0.1, 0.9, by = 0.2)
breaks <- seq(0, 1, by = 0.25)

cutf(x, breaks, format_fun = scales::percent)
# [1] (0%,25%]   (25%,50%]  (25%,50%]  (50%,75%]  (75%,100%]
# Levels: (0%,25%] (25%,50%] (50%,75%] (75%,100%]

smart_cut(x, breaks, format_fun = scales::percent,simplify = F, closed = "right")
# [1] [0%,25%]   (25%,50%]  (25%,50%]  (50%,75%]  (75%,100%]
# Levels: [0%,25%] < (25%,50%] < (50%,75%] < (75%,100%]

Hmisc::cut2 now also has a formatfun argument :

library(Hmisc)
Hmisc::cut2(x, breaks, formatfun = scales::percent)
# [1] [0%,25%)   [25%,50%)  [50%,75%)  [50%,75%)  [75%,100%]
# Levels: [0%,25%) [25%,50%) [50%,75%) [75%,100%]
1
  • 2
    Happy to retire my cut_format() once cutr is on CRAN.
    – krlmlr
    Nov 4, 2018 at 20:41
2

The new {santoku} package now offers a way to do this in the development version:

library(santoku)

set.seed(20200607)
x <- runif(20)

chop_evenly(x, 10, labels = lbl_intervals(fmt = percent))
#>  [1] [33.13%, 42.11%) [60.08%, 69.06%) [69.06%, 78.04%) [69.06%, 78.04%)
#>  [5] [87.02%, 96%]    [6.193%, 15.17%) [15.17%, 24.15%) [6.193%, 15.17%)
#>  [9] [33.13%, 42.11%) [6.193%, 15.17%) [87.02%, 96%]    [51.1%, 60.08%) 
#> [13] [42.11%, 51.1%)  [6.193%, 15.17%) [42.11%, 51.1%)  [6.193%, 15.17%)
#> [17] [6.193%, 15.17%) [69.06%, 78.04%) [78.04%, 87.02%) [87.02%, 96%]   
#> 9 Levels: [6.193%, 15.17%) [15.17%, 24.15%) ... [87.02%, 96%]
tab_evenly(x, 10, labels = lbl_intervals(fmt = scales::label_percent(accuracy = 0.1)))
#> x
#>  [6.2%, 15.2%) [15.2%, 24.2%) [33.1%, 42.1%) [42.1%, 51.1%) [51.1%, 60.1%) 
#>              6              1              2              2              1 
#> [60.1%, 69.1%) [69.1%, 78.0%) [78.0%, 87.0%) [87.0%, 96.0%] 
#>              1              3              1              3

Created on 2020-06-09 by the reprex package (v0.3.0)

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