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I have data which shows who is in a photo stored as CSV in a file:

| image      | people                    |
| image1.png | John, Paul                |
| image2.png | John                      |
| image3.png |                           |
| image4.png | George, Paul, John, Ringo |
| ...        |                           |

I would like to load it into R, and plot this in various ways, but let's say I'd like to get a bar graph that shows how many appearances each person makes.

I can restructure the data if that helps.

Thank you

share|improve this question
what does your data actually look like in R? use dput(yourdata) or a subset of your data. The picture above isn't an R data structure. However, what you're asking is very straight forward. Look at melt from the reshape2 package. – Justin Oct 19 '12 at 21:36
Yeah, this is still in raw format (e.g. CSV). I'd like to also figure out how best to load it into R. – oneself Oct 19 '12 at 21:55
can you put a portion of the csv up then? I assume it doesn't look like that! – Justin Oct 19 '12 at 21:57
up vote 1 down vote accepted

A dataset like this describes the situation you mention in your question:

people_list = c("Edward", "Smith", "Neo", "Mr. Anderson", 
                "Red John", "Blackbeard", "Lily", "Anne")
dat = data.frame(image = sprintf("image%d.png", 1:100))
dat = ddply(dat, .(image), function(x) {
  people = sample(people_list, size = sample(1:length(people_list), 1))
  return(data.frame(image = x$image, people))
> head(dat)
       image     people
1 image1.png Blackbeard
2 image1.png     Edward
3 image1.png       Anne
4 image1.png       Lily
5 image1.png        Neo
6 image1.png   Red John

If you cast your dataset in this shape, you can calculate aggregations from this using ddply from plyr:

# Number of occurences of people
occ = ddply(dat, .(people), summarise, no_occurence = length(people))
> occ
        people no_occurence
1         Anne           48
2   Blackbeard           56
3       Edward           46
4         Lily           55
5 Mr. Anderson           55
6          Neo           51
7     Red John           60
8        Smith           56

...and take this to create a barplot for example:

ggplot(occ, aes(x = people, y = no_occurence)) + geom_bar()

enter image description here

This can probably get you started in creating other visualizations.

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