Subset R data frame contingent on the value of duplicate variables

How can I subset the following example data frame to only return one observation for the earliest occurance [i.e. min(year)] of each id?

``````id <- c("A", "A", "C", "D", "E", "F")
year <- c(2000, 2001, 2001, 2002, 2003, 2004)
qty  <- c(100, 300, 100, 200, 100, 500)
df=data.frame(year, qty, id)
``````

In the example above there are two observations for the "A" id at years 2000 and 2001. In the case of duplicate id's, I would like the subset data frame to only include the the first occurance (i.e. at 2000) of the observations for the duplicate id.

``````df2 = subset(df, ???)
``````

This is what I am trying to return:

``````df2

year qty id
2000 100  A
2001 100  C
2002 200  D
2003 100  E
2004 500  F
``````

Any assistance would be greatly appreciated.

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You can aggregate on minimum year + id, then merge with the original data frame to get qty:

``````df2 <- merge(aggregate(year ~ id, df1, min), df1)

# > df2
#   id year qty
# 1  A 2000 100
# 2  C 2001 100
# 3  D 2002 200
# 4  E 2003 100
# 5  F 2004 500
``````
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great intuitive solution. thank you very much. –  MikeTP Jun 27 '12 at 1:18

Is this what you're looking for? Your second row looks wrong to me (it's the duplicated year, not the first).

``````> duplicated(df\$year)
[1] FALSE FALSE  TRUE FALSE FALSE FALSE
> df[!duplicated(df\$year), ]
year qty id
1 2000 100  A
2 2001 300  A
4 2002 200  D
5 2003 100  E
6 2004 500  F
``````

Edit 1: Er, I completely misunderstood what you were asking for. I'll keep this here for completeness though.

Edit 2:

Ok, here's a solution: Sort by year (so the first entry per ID has the earliest year) and then use `duplicated`. I think this is the simplest solution:

``````> df.sort.year <- df[order(df\$year), ]
> df.sort.year[!duplicated(df\$id),  ]
year qty id
1 2000 100  A
3 2001 100  C
4 2002 200  D
5 2003 100  E
6 2004 500  F
``````
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thank you, I wasn't aware of the duplicated function –  MikeTP Jun 27 '12 at 1:20

Using plyr

``````library(plyr)
## make sure first row will be min (year)
df <- arrange(df, id, year)
df2 <- ddply(df, .(id), head, n = 1)

df2
##   year qty id
## 1 2000 100  A
## 2 2001 100  C
## 3 2002 200  D
## 4 2003 100  E
## 5 2004 500  F
``````

or using data.table. Setting the key as id, year will ensure the first row is the minimum of year.

``````library(data.table)
DF <- data.table(df, key = c('id','year'))
DF[,.SD[1], by = 'id']

##      id year qty
## [1,]  A 2000 100
## [2,]  C 2001 100
## [3,]  D 2002 200
## [4,]  E 2003 100
## [5,]  F 2004 500
``````
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Also, for large data.tables, this may be faster: `DF[J(unique(DF[,id])), mult="first"]`. –  Josh O'Brien Jun 26 '12 at 23:41

There is likely a prettier way of doing this, but this is what came to mind

``````# use which() to get index for each id, saving only first
first_occurance <- with(df, sapply(unique(id), function(x) which(id %in% x)[1]))
df[first_occurance,]
#  year qty id
#1 2000 100  A
#3 2001 100  C
#4 2002 200  D
#5 2003 100  E
#6 2004 500  F
``````
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