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From a dataframe like this

test <- data.frame('id'= rep(1:5,2), 'string'= LETTERS[1:10])
test <- test[order(test$id), ]
rownames(test) <- 1:10

> test
    id string
 1   1      A
 2   1      F
 3   2      B
 4   2      G
 5   3      C
 6   3      H
 7   4      D
 8   4      I
 9   5      E
 10  5      J

I want to create a new one with the first appearance of each id / string pair. If sqldf accepted R code within it, the query could look like this:

res <- sqldf("select id, min(rownames(test)), string 
              from test 
              group by id, string")

> res
    id string
 1   1      A
 3   2      B
 5   3      C
 7   4      D
 9   5      E

Is there a solution short of creating a new column like

test$row <- rownames(test)

and running the same sqldf query with min(row)?

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There may be some advantages to you in leaving it longer than one hour before accepting, perhaps 24 hours. There seem to be some question marks on this one. –  Matt Dowle Nov 8 '12 at 1:03

6 Answers 6

up vote 18 down vote accepted

You can use duplicated to do this very quickly.

test[!duplicated(test$id),]

Benchmarks, for the speed freaks:

ju <- function() test[!duplicated(test$id),]
gs1 <- function() do.call(rbind, lapply(split(test, test$id), head, 1))
gs2 <- function() do.call(rbind, lapply(split(test, test$id), `[`, 1, ))
jply <- function() ddply(test,.(id),function(x) head(x,1))
jdt <- function() {
  testd <- as.data.table(test)
  setkey(testd,id)
  # Initial solution (slow)
  # testd[,lapply(.SD,function(x) head(x,1)),by = key(testd)]
  # Faster options :
  testd[!duplicated(id)]               # (1)
  # testd[, .SD[1L], by=key(testd)]    # (2)
  # testd[J(unique(id)),mult="first"]  # (3)
  # testd[ testd[,.I[1L],by=id] ]      # (4) needs v1.8.3. Allows 2nd, 3rd etc
}

library(plyr)
library(data.table)
library(rbenchmark)

# sample data
set.seed(21)
test <- data.frame(id=sample(1e3, 1e5, TRUE), string=sample(LETTERS, 1e5, TRUE))
test <- test[order(test$id), ]

benchmark(ju(), gs1(), gs2(), jply(), jdt(),
    replications=5, order="relative")[,1:6]
#     test replications elapsed relative user.self sys.self
# 1   ju()            5    0.03    1.000      0.03     0.00
# 5  jdt()            5    0.03    1.000      0.03     0.00
# 3  gs2()            5    3.49  116.333      2.87     0.58
# 2  gs1()            5    3.58  119.333      3.00     0.58
# 4 jply()            5    3.69  123.000      3.11     0.51

Let's try that again, but with just the contenders from the first heat and with more data and more replications.

set.seed(21)
test <- data.frame(id=sample(1e4, 1e6, TRUE), string=sample(LETTERS, 1e6, TRUE))
test <- test[order(test$id), ]
benchmark(ju(), jdt(), order="relative")[,1:6]
#    test replications elapsed relative user.self sys.self
# 1  ju()          100    5.48    1.000      4.44     1.00
# 2 jdt()          100    6.92    1.263      5.70     1.15
share|improve this answer
    
+1, that is very clever! –  Gavin Simpson Nov 7 '12 at 23:13
    
The winner: system.time(dat3[!duplicated(dat3$id),]) user system elapsed 0.07 0.00 0.07 –  dmvianna Nov 7 '12 at 23:18
    
Oi! Where's sqldf? ;7) –  dmvianna Nov 7 '12 at 23:31
    
@dmvianna: I don't have it installed and didn't feel like bothering with it. :) –  Joshua Ulrich Nov 7 '12 at 23:33
2  
Also, I reckon, if you are going to benchmark the data.table , keying you should include the ordering by id within the base calls. –  mnel Nov 8 '12 at 0:42

(1) SQLite has a built in rowid pseudo-column so this works:

> sqldf("select min(rowid) rowid, id, string 
+               from test 
+               group by id")
  rowid id string
1     1  1      A
2     3  2      B
3     5  3      C
4     7  4      D
5     9  5      E

(2) Also sqldf itself has a row.names= argument:

> sqldf("select min(cast(row_names as real)) row_names, id, string 
+               from test 
+               group by id", row.names = TRUE)
  id string
1  1      A
3  2      B
5  3      C
7  4      D
9  5      E

(3) A third alternative which mixes the elements of the above two might be even better:

> sqldf("select min(rowid) row_names, id, string 
+                from test 
+                group by id", row.names = TRUE)
  id string
1  1      A
3  2      B
5  3      C
7  4      D
9  5      E

Mote that all three of these rely on a SQLite extension to SQL where the use of min or max is guaranteed to result in the other columns being chosen from the same row. (In other SQL-based databases that may not be guaranteed.)

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A simple ddply option:

ddply(test,.(id),function(x) head(x,1))

If speed is an issue, a similar approach could be taken with data.table:

testd <- data.table(test)
setkey(testd,id)
testd[,lapply(.SD,function(x) head(x,1)),by = key(testd)]
share|improve this answer
    
Surprisingly, sqldf does it faster: 1.77 0.13 1.92 vs 10.53 0.00 10.79 with data.table –  dmvianna Nov 7 '12 at 23:21
3  
@dmvianna I wouldn't necessarily count out data.table. I'm not an expert with that tool, so my data.table code may not be the most efficient way to go about that. –  joran Nov 7 '12 at 23:26

A base R option is the split()-lapply()-do.call() idiom:

> do.call(rbind, lapply(split(test, test$id), head, 1))
  id string
1  1      A
2  2      B
3  3      C
4  4      D
5  5      E

A more direct option is to lapply() the [ function:

> do.call(rbind, lapply(split(test, test$id), `[`, 1, ))
  id string
1  1      A
2  2      B
3  3      C
4  4      D
5  5      E

The comma-space 1, ) at the end of the lapply() call is essential as this is equivalent of calling [1, ] to select first row and all columns.

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This was very slow, Gavin: user system elapsed 91.84 6.02 101.10 –  dmvianna Nov 7 '12 at 23:22
    
Anything involving data frames will be. Their utility comes at a price. Hence data.table, for example. –  Gavin Simpson Nov 7 '12 at 23:32
    
in my defence, and R's, you didn't mention anything about efficiency in the question. Often ease of use is a feature. Witness the popularity of ply, which is "slow" too, at least until the next version that has data.table support. –  Gavin Simpson Nov 8 '12 at 7:10
1  
I agree. I didn't mean to insult you. I did find, though, that @Joshua-Ulrich's method was both fast and easy. :7) –  dmvianna Nov 8 '12 at 9:04
1  
+1 for saying @JoshuaUlrich is both fast and easy ;-) –  Gavin Simpson Nov 8 '12 at 9:10

What about

DT <- data.table(test)
setkey(DT, id)

DT[J(unique(id)), mult = "first"]

Edit

There is also a unique method for data.tables which will return the the first row by key

jdtu <- function() unique(DT)

I think, if you are ordering test outside the benchmark, then you can removing the setkey and data.table conversion from the benchmark as well (as the setkey basically sorts by id, the same as order).

set.seed(21)
test <- data.frame(id=sample(1e3, 1e5, TRUE), string=sample(LETTERS, 1e5, TRUE))
test <- test[order(test$id), ]
DT <- data.table(DT, key = 'id')
ju <- function() test[!duplicated(test$id),]

jdt <- function() DT[J(unique(id)),mult = 'first']


 library(rbenchmark)
benchmark(ju(), jdt(), replications = 5)
##    test replications elapsed relative user.self sys.self 
## 2 jdt()            5    0.01        1      0.02        0        
## 1  ju()            5    0.05        5      0.05        0         

and with more data

** Edit with unique method**

set.seed(21)
test <- data.frame(id=sample(1e4, 1e6, TRUE), string=sample(LETTERS, 1e6, TRUE))
test <- test[order(test$id), ]
DT <- data.table(test, key = 'id')
       test replications elapsed relative user.self sys.self 
2  jdt()            5    0.09     2.25      0.09     0.00    
3 jdtu()            5    0.04     1.00      0.05     0.00      
1   ju()            5    0.22     5.50      0.19     0.03        

The unique method is fastest here.

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+1 jdtu good idea. I'd forgotten about unique(DT). –  Matt Dowle Nov 8 '12 at 9:18

now, for dplyr, adding a distinct counter.

dfx <- df %>% group_by(aa, bb) %>%
        summarise(first=head(value,1), count=n_distinct(value))

you create groups, them summarise within groups. if data is numeric, you can use:
first(value) [there is also last(value)] in place of head(value, 1)

see: http://cran.rstudio.com/web/packages/dplyr/vignettes/introduction.html

Full:

> df
Source: local data frame [16 x 3]

   aa bb value
1   1  1   GUT
2   1  1   PER
3   1  2   SUT
4   1  2   GUT
5   1  3   SUT
6   1  3   GUT
7   1  3   PER
8   2  1   221
9   2  1   224
10  2  1   239
11  2  2   217
12  2  2   221
13  2  2   224
14  3  1   GUT
15  3  1   HUL
16  3  1   GUT

library(dplyr)
dfx <- df %>% group_by(aa, bb) %>%
    summarise(first=head(value,1), count=n_distinct(value))

> dfx
Source: local data frame [6 x 4]
Groups: aa

  aa bb first count
1  1  1   GUT     2
2  1  2   SUT     2
3  1  3   SUT     3
4  2  1   221     3
5  2  2   217     3
6  3  1   GUT     2
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