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I am trying to remove duplicate observations from a data set based on my variable, id. However, I want the removal of observations to be based on the following rules. The variables below are id, the sex of household head (1-male, 2-female) and the age of the household head. The rules are as follows. If a household has both male and female household heads, remove the female household head observation. If a household as either two male or two female heads, remove the observation with the younger household head. An example data set is below.

id = c(1,2,2,3,4,5,5,6,7,8,8,9,10)
sex = c(1,1,2,1,2,2,2,1,1,1,1,2,1)
age = c(32,34,54,23,32,56,67,45,51,43,35,80,45)
data = data.frame(cbind(id,sex,age))
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2 Answers 2

up vote 6 down vote accepted

You can do this by first ordering the data.frame so the desired entry for each id is first, and then remove the rows with duplicate ids.

d <- with(data, data[order(id, sex, -age),])
#    id sex age
# 1   1   1  32
# 2   2   1  34
# 3   2   2  54
# 4   3   1  23
# 5   4   2  32
# 7   5   2  67
# 6   5   2  56
# 8   6   1  45
# 9   7   1  51
# 10  8   1  43
# 11  8   1  35
# 12  9   2  80
# 13 10   1  45
d[!duplicated(d$id), ]
#    id sex age
# 1   1   1  32
# 2   2   1  34
# 4   3   1  23
# 5   4   2  32
# 7   5   2  67
# 8   6   1  45
# 9   7   1  51
# 10  8   1  43
# 12  9   2  80
# 13 10   1  45
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I was thinking more complicated. Simple use of logic +1 –  Tyler Rinker Mar 22 '13 at 18:05
    
had the same idea, but didn't come up with -age (+1) –  adibender Mar 22 '13 at 18:07
    
id 10 seems to be missing from the output though... –  adibender Mar 22 '13 at 18:11
    
thanks @abibender, fixed. –  Matthew Plourde Mar 22 '13 at 18:14
    
very nice indeed! thanks. –  DBK Mar 22 '13 at 18:22

With data.table, this is easy with "compound queries". To order the data when you read it in, set the "key" when you read it in as "id,sex" (required in case any female values would come before male values for a given ID).

> library(data.table)
> DT <- data.table(data, key = "id,sex")
> DT[, max(age), by = key(DT)][!duplicated(id)]
    id sex V1
 1:  1   1 32
 2:  2   1 34
 3:  3   1 23
 4:  4   2 32
 5:  5   2 67
 6:  6   1 45
 7:  7   1 51
 8:  8   1 43
 9:  9   2 80
10: 10   1 45
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+1 your data.table Answers are always eye opening –  Matthew Plourde Mar 22 '13 at 18:40
    
had to remove my edit as my solution was to "keep the youngest". Read the question wrong. –  Arun Mar 24 '13 at 0:45

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