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I have some data formatted like the following:

    2     2
    2     1
    2     1
    2     1
    2     1
    2     1
    2     2
    2     1
    2     1
    2     1
    2     2
    2     2
    2     1
    2     1
    2     2
    2     2
    2     1
    2     1
    2     1
    2     1
    2     1
    2     1
    2     1
    3     1
    3     1
    3     1
    3     3
    3     2
    3     2
    4     4
    4     2
    4     4
    4     2
    4     4
    4     2
    4     2
    4     4
    4     2
    4     2
    4     1
    4     1
    4     2
    4     3
    4     1
    4     3
    6     1
    6     1
    6     2
    7     1
    7     1
    7     1
    7     1
    7     1
    8     2
    8     2
    8     2
    8     2
    8     2
    8     2
   12     1
   12     1
   12     1
   12     1
   12     1

I am trying to plot the ecdf of this dataset for each distinct value in the first column. Therefore in this case, I want to plot 7 ecdf curves on a graph (one for all points that have 2 in their first column, one for all points that have 3 in their first column and so on...). For one column, I am able to plot the ecdf using the following:

data = read.table("./test", header=F)
data1 = data[data$V1 == 2,]
qplot(unique(data1$V2), ecdf(data1$V2)(unique(data1$V2)), geom='step')

But I am not able to understand how to plot multiple curves. Any suggestions?

share|improve this question
    
Please post a reproducible example. Even simulating your data, I can't make your existing attempt work. –  Ari B. Friedman Jul 27 '11 at 6:44
    
Sorry! I had a typo in the statement. Updated with the set of statements that work. –  Legend Jul 27 '11 at 6:46

2 Answers 2

up vote 13 down vote accepted

Easier if you move away from qplot():

library(plyr)
library(ggplot2)
d.f <- data.frame(
  grp = as.factor( rep( c("A","B"), each=40 ) ) ,
  val = c( sample(c(2:4,6:8,12),40,replace=TRUE), sample(1:4,40,replace=TRUE) )
  )
d.f <- arrange(d.f,grp,val)
d.f.ecdf <- ddply(d.f, .(grp), transform, ecdf=ecdf(val)(val) )

p <- ggplot( d.f.ecdf, aes(val, ecdf, colour = grp) )
p + geom_step()

You can also easily add in facet_wrap for more than one group, and xlab/ylab for labels.

multiple ecdfs

d.f <- data.frame(
  grp = as.factor( rep( c("A","B"), each=120 ) ) ,
  grp2 = as.factor( rep( c("cat","dog","elephant"), 40 ) ) ,
  val = c( sample(c(2:4,6:8,12),120,replace=TRUE), sample(1:4,120,replace=TRUE) )
  )
d.f <- arrange(d.f,grp,grp2,val)
d.f.ecdf <- ddply(d.f, .(grp,grp2), transform, ecdf=ecdf(val)(val) )

p <- ggplot( d.f.ecdf, aes(val, ecdf, colour = grp) )
p + geom_step() + facet_wrap( ~grp2 )

using 2 grouping variables

share|improve this answer
    
good attempt to give the answer. –  Siten Jul 27 '11 at 12:32
    
Awesome! Thank you very much for your help! –  Legend Jul 27 '11 at 18:48
    
Sure. Glad it helped. –  Ari B. Friedman Jul 27 '11 at 18:53

Since the end of 2012, ggplot2 includes a dedicated function for printing ecdfs: ggplot2 docs.

The example from there is even shorter than the good solution by Ari:

df <- data.frame(x = c(rnorm(100, 0, 3), rnorm(100, 0, 10)),
             g = gl(2, 100))
ggplot(df, aes(x, colour = g)) + stat_ecdf()

ecdf

share|improve this answer
    
Nicely spotted. Added a graph. –  Ari B. Friedman Apr 9 '13 at 11:10

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