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Background: I have a data frame with one column having duplicate values. I am trying to split this data frame by picking out all the rows with duplicate column values, process them and then spit out a new data frame with all processed rows.

I am amazed as to what is going wrong here in the following code:

    dataSet <- structure(list(DAY = structure(1:10, .Label = c("Tuesday", 
    "Tuesday", "Tuesday", "Tuesday", "Tuesday", 
    "Tuesday", "Tuesday", "Tuesday", "Tuesday", 
    "Tuesday", "Tuesday", "Tuesday", "Tuesday", 
    "Tuesday", "Tuesday", "Tuesday", "Tuesday", 
    "Tuesday", "Tuesday", "Tuesday", "Tuesday", 
    "Tuesday", "Tuesday", "Tuesday"), class = "factor"), 
        variable = structure(c(1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 1L, 
        1L), .Label = c("act1", "act2", "act3", "act4", 
        "act5", "act12", "act19", "act116", "act22", 
        "act6", "act13", "act111", "act117", "act23", 
        "act7", "act14", "act112", "act118", "act24", 
        "act8", "act15", "act113", "act119", "act25", 
        "act9", "act16", "act114", "act20", "act26", 
        "act10", "act17", "act115", "act21", "act27", 
        "act11", "act18"), class = "factor"), value = c(67, 
        65, 40, 79, 106, 90, 57, 59, 2, 12)), .Names = c("DAY", 
    "variable", "value"), row.names = c(NA, 10L), class = "data.frame")


uniq <- unique(dataSet$variable)
for (i in 1:length(uniq)){
     rowsPerVal <- dataSet[dataSet$variable == uniq[i], ]
     print(length(rowsPerVal))
}

I just don't understand how the final print statement says the length is 3, when there are 10 records in the data frame with the same value for variable column.

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3  
The length of a data frame is the number of columns, since it is in fact a list. You probably meant nrow or something. –  joran May 8 '13 at 20:09
    
Um, you only have one value in "uniq" in your example. Is that enough to illustrate your problem? Oh, never mind, joran's right: print(nrow(...)) instead. Or better, just print(sum(dataSet$variable == uniq[i])) and skip the line above. There's certainly a way to do this without looping, too. –  Frank May 8 '13 at 20:18
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3 Answers

up vote 3 down vote accepted

plyr is also good for this split-apply-combine problem (split data set up into chunks, operate on each one, and put back together).

library("plyr")
ddply(dataSet, .(variable), nrow)

As others have said the length() of a data.frame is the number of columns; nrow() is the number of rows.

> ddply(dataSet, .(variable), nrow)
  variable V1
1     act1 10

You can replace nrow with an (anonymous) function which does whatever processing you want.

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You can use data.table:

require(data.table)
dt <- data.table(dataSet)
dt[,.N,by=variable]
#    variable  N
# 1:     act1 10
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duplicated returns TRUE only for the 2+th entry. So you can use it to index your rows:

dataSet[duplicated(dataSet$variable),] 

You can also assign to them:

dataSet[duplicated(dataSet$variable),]$value <- NA 
> dataSet
       DAY variable value
1  Tuesday     act1    67
2  Tuesday     act1    NA
3  Tuesday     act1    NA
4  Tuesday     act1    NA
5  Tuesday     act1    NA
6  Tuesday     act1    NA
7  Tuesday     act1    NA
8  Tuesday     act1    NA
9  Tuesday     act1    NA
10 Tuesday     act1    NA

To "spit out a new data frame with all processed rows", you can just process the subsetted data.frame however you like:

newDF <- transform( dataSet[duplicated(dataSet$variable),], DAY=sub("esd","foo",DAY) )
share|improve this answer
    
I don't see how this is related to the question. –  Brian Diggs May 8 '13 at 21:20
    
@BrianDiggs Question is a bit ambiguous, but "split this data frame by picking out all the rows with duplicate column values" was what Iw as focusing on, since that's what he attempts with unique. I'll change my answer to correctly answer his second piece, spit out a new data frame with all processed rows. –  Ari B. Friedman May 8 '13 at 21:36
    
My concern was with duplicated not identifying all the rows in a group (one row per group is not there, and all the secondary rows are clumped together in a single group). Your edit addresses what I thought the point was. Removing down vote :) –  Brian Diggs May 8 '13 at 21:40
1  
Hm, upon re-reading I think you might be right. "The rows" might mean just the 2+th row, but "all the rows" includes the initial row? My ambiguous question dowsing rod is not very good today! I'll delete if OP clarifies this isn't what he/she wanted. –  Ari B. Friedman May 8 '13 at 21:51
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