Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

I am trying to replicate a table often used in official statistics but no success so far. Given a dataframe like this one:

d1 <- data.frame( StudentID = c("x1", "x10", "x2", 
                          "x3", "x4", "x5", "x6", "x7", "x8", "x9"),
             StudentGender = c('F', 'M', 'F', 'M', 'F', 'M', 'F', 'M', 'M', 'M'),
             ExamenYear    = c('2007','2007','2007','2008','2008','2008','2008','2009','2009','2009'),
             Exam          = c('algebra', 'stats', 'bio', 'algebra', 'algebra', 'stats', 'stats', 'algebra', 'bio', 'bio'),
             participated  = c('no','yes','yes','yes','no','yes','yes','yes','yes','yes'),  
             passed      = c('no','yes','yes','yes','no','yes','yes','yes','no','yes'),
             stringsAsFactors = FALSE)

I would like to create a table showing PER YEAR , the number of all students (all) and those who are female, those who participated and those who passed. Please note "ofwhich" below refers to all students.

A table I have in mind would look like that:

cbind(All = table(d1$ExamenYear),
  participated      = table(d1$ExamenYear, d1$participated)[,2],
  ofwhichFemale     = table(d1$ExamenYear, d1$StudentGender)[,1],
  ofwhichpassed     = table(d1$ExamenYear, d1$passed)[,2])

I am sure there is a better way to this kind of thing in R.

Note: I have seen LaTex solutions, but I am not use this will work for me as I need to export the table in Excel .

Thanks in advance

share|improve this question

4 Answers 4

up vote 6 down vote accepted

Using plyr:

require(plyr)
ddply(d1, .(ExamenYear), summarize,
      All=length(ExamenYear),
      participated=sum(participated=="yes"),
      ofwhichFemale=sum(StudentGender=="F"),
      ofWhichPassed=sum(passed=="yes"))

Which gives:

  ExamenYear All participated ofwhichFemale ofWhichPassed
1       2007   3            2             2             2
2       2008   4            3             2             3
3       2009   3            3             0             2
share|improve this answer
    
thank you. Thanks a lot. I am definitely going to learn plyr. –  user1043144 Aug 7 '12 at 19:18
    
Good answer but one minute later than @csgillespie. –  Jilber Aug 7 '12 at 19:20
    
@Jilber, I think you meant one minute earlier. There should be no "but" in your comment. –  Ananda Mahto Aug 7 '12 at 19:22

The plyr package is great for this sort of thing. First load the package

library(plyr)

Then we use the ddply function:

ddply(d1, "ExamenYear", summarise, 
      All = length(passed),##We can use any column for this statistics
      participated = sum(participated=="yes"),
      ofwhichFemale = sum(StudentGender=="F"),
      ofwhichpassed = sum(passed=="yes"))

Basically, ddply expects a dataframe as input and returns a data frame. We then split up the input data frame by ExamenYear. On each sub table we calculate a few summary statistics. Notice that in ddply, we don't have to use the $ notation when referring to columns.

share|improve this answer
    
Thanks. you both made my day –  user1043144 Aug 7 '12 at 19:19

There could have been a couple of modifications (use with to reduce the number of df$ calls and use character indices to improve self-documentation) to your code that would have made it easier to read and a worthy competitor to the ddply solutions:

with( d1, cbind(All = table(ExamenYear),
  participated      = table(ExamenYear, participated)[,"yes"],
  ofwhichFemale     = table(ExamenYear, StudentGender)[,"F"],
  ofwhichpassed     = table(ExamenYear, passed)[,"yes"])
     )

     All participated ofwhichFemale ofwhichpassed
2007   3            2             2             2
2008   4            3             2             3
2009   3            3             0             2

I would expect this to be much faster than the ddply solution, although that will only be apparent if you are working on larger datasets.

share|improve this answer

You may also want to take a look of the plyr's next iterator: dplyr

It uses a ggplot-like syntax and provide fast performance by writing key pieces in C++.

d1 %.% 
group_by(ExamenYear) %.%    
summarise(ALL=length(ExamenYear),
          participated=sum(participated=="yes"),
          ofwhichFemale=sum(StudentGender=="F"),
          ofWhichPassed=sum(passed=="yes"))
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.