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 have a data.frame called series_to_plot.df which I created by combining a number of other data.frames together (shown below). I now want to pull out just the .mm column from each of these, so I can plot them. So I want to pull out the 3rd column of each data.frame (e.g. p3c3.mm, p3c4.mm etc...), but I can't see how to do this for all data.frames in the object without looping through the name. Is this possible?

I can pull out just one set: e.g. series_to_plot.df[[3]] and another by series_to_plot.df[[10]] (so it is just a list of vectors..) and I can reference directly with series_to_plot.df$p3c3.mm, but is there a command to get a vector containing all mm's from each data.frame? I was expecting an index something like this to work: series_to_plot.df[,3[3]] but it returns Error in [.data.frame(series_to_plot.df, , 3[3]) : undefined columns selected

series_to_plot.df
          p3c3.rd         p3c3.day    p3c3.mm      p3c3.sd                 p3c3.n p3c3.noo p3c3.no_NAs
    1     2010-01-04             0    0.1702531    0.04003364              7                1           0
    2     2010-01-06             2    0.1790594    0.04696674              7                1           0
    3     2010-01-09             5    0.1720404    0.03801756              8                0           0

          p3c4.rd         p3c4.day    p3c4.mm      p3c4.sd                 p3c4.n p3c4.noo p3c4.no_NAs
    1     2010-01-04             0    0.1076581   0.006542157              6                2           0
    2     2010-01-06             2    0.1393447   0.066758781              7                1           0
    3     2010-01-09             5    0.2056846   0.047722862              7                1           0

          p3c5.rd         p3c5.day    p3c5.mm      p3c5.sd                 p3c5.n p3c5.noo p3c5.no_NAs
    1     2010-01-04             0   0.07987147   0.006508766              7                1           0
    2     2010-01-06             2   0.11496167   0.046478767              8                0           0
    3     2010-01-09             5   0.40326471   0.210217097              7                1           0
share|improve this question
    
Are you sure series_to_plot.df is a data frame? As I read your comment and look at the output I'm wondering if it is a list or vector containing a number of data frames. I'm not sure why your output shows column headers every 3 rows and the row numbers start over. To test the structure run str(series_to_plot.df) –  JD Long Feb 24 '10 at 20:52
    
Thanks, yes it was a data.frame, it was a set of data.frames inside another data.frame. But you are correct, this is not the best data structure, I found some hints for the best structure here: stackoverflow.com/questions/1181060/… –  John Feb 25 '10 at 23:27
add comment

3 Answers

up vote 2 down vote accepted

To add to the other answers, I don't think it is a good idea to have useful information encoded in variable names. Much better to rearrange your data so that all useful information is in the value of some variable. I don't know enough about your data set to suggest the right format, but it might be something like

p c         rd day date mm sd ...
3 3 2010-10-04 ...

Once you have done this the answer to your question becomes the simple df$mm.

If you are getting the data in a less useful form from an external source, you can rearrange it in a more useful form like the above within R using the reshape function or functions from the reshape package.

share|improve this answer
    
I tried suggest it in my answer too, but I assumed that pxcy is a name of a partial data.frame (that rbind/cbind stuff). But your hint to include parts of names as new columns is very nice. –  Marek Feb 25 '10 at 8:37
    
Thanks, I'll try melt and reshape... (also see stackoverflow.com/questions/1181060/…) –  John Feb 25 '10 at 23:29
add comment

To get all columns with specified name you could do:

names_with_mm <- grep("mm$", names(series_to_plot.df), value=TRUE)
series_to_plot.df[, names_with_mm]

But if your base data.frame's all have the same structure then you can rbind them, something like:

series_to_plot.df <- rbind(
  cbind(name="p3c3", p3c3),
  cbind(name="p3c4", p3c4),
  cbind(name="p3c5", p3c5)
)

Then mm values are in one column and its easier to plot.

share|improve this answer
add comment

The R Language Definition has some good info on indexing (sec 3.4.1), which is pretty helpful.

You can then pull the names matching a sequence with the grep() command. Then string it all together like this:

 dataWithMM <- series_to_plot.df[,grep("[P]", names(series_to_plot.df))]

to deconstruct it a little, this gets the number of the columns that match the "mm" pattern:

 namesThatMatch <- grep("[mm]", names(series_to_plot.df)

Then we use that list to call the columns we want:

  dataWithMM <- series_to_plot.df[, namesThatMatch ]
share|improve this answer
    
Marek's answer has a better regex than mine. "[mm]" will match any column with "mm" in it anywhere. "mm$" will match only the columns that end in "mm" which may be a better fit. –  JD Long Feb 24 '10 at 20:49
add comment

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.