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Imagine you have two data frames

df1 <- data.frame(V1 = c(1, 2, 3), v2 = c("a", "b", "c"))
df2 <- data.frame(V1 = c(1, 2, 2), v2 = c("b", "b", "c"))

Here's what they look like, side by side:

> cbind(df1, df2)
  V1 v2 V1 v2
1  1  a  1  b
2  2  b  2  b
3  3  c  2  c

You want to know which observations are duplicates, across all variables.

This can be done by pasting the cols together and then using %in%:

df1Vec <- apply(df1, 1, paste, collapse= "")
df2Vec <- apply(df2, 1, paste, collapse= "")
df2Vec %in% df1Vec
[1] FALSE  TRUE FALSE

The second observation is thus the only one in df2 and also in df1.

Is there no faster way of generating this output - something like %IN%, which is %in% across multiple variables, or should we just be content with the apply(paste) solution?

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one two do these answer your question? –  rawr May 31 '14 at 14:36

2 Answers 2

up vote 4 down vote accepted

I would go with

interaction(df2) %in% interaction(df1)
# [1] FALSE  TRUE FALSE

You can wrap it in a binary operator:

"%IN%" <- function(x, y) interaction(x) %in% interaction(y)

Then

df2 %IN% df1
# [1] FALSE  TRUE FALSE

rbind(df2, df2) %IN% df1
# [1] FALSE  TRUE FALSE FALSE  TRUE FALSE

Disclaimer: I have somewhat modified my answer from a previous one that was using do.call(paste, ...) instead of interaction(...). Consult the history if you like. I think that Arun's claims about "terrible inefficiency" (a bit extreme IMHO) still hold but if you like a concise solution that uses base R only and is fast-ish with small-ish data that's probably it.

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Concise, works and uses a neat little function (interaction) that I've never seen before. You guys R R machines! Many thanks for helping out and making R such an awesome language to use. Next stage: rewrite my horrible code and spread the word (I'm writing code for use by academics but need to get MUCH better at coding before thinking about creating a package). –  RobinLovelace Jun 1 '14 at 23:48

Calling duplicated on a data.frame or using paste coerces all columns to character type, which is terribly inefficient as the data size gets bigger. duplicated.data.table method does not coerce them to characters and is therefore quite efficient and scales well.

Here's one way using data.table:

`%dtIN%` <- function(y, x) {
    tmp = rbindlist(list(x,y))
    len_ = nrow(x)
    tmp[, idx := any(.I <= len_) & .N > 1L, by=names(tmp)]
    tail(tmp$idx, nrow(y))
}

# example:
df1 <- data.frame(V1 = c(1, 2, 3), v2 = c("a", "b", "c"))
df2 <- data.frame(V1 = c(1, 2, 1, 2, 1), v2 = c("b", "b", "b", "c", "b"))

df2 %dtIN% df1
# [1] FALSE  TRUE FALSE FALSE FALSE

Benchmarks:

@flodel's (earlier) benchmark is nice (see history), but doesn't really showcase the true effects of this unnecessary coercion, because the entire data size is:

print(object.size(df1), units="Kb") # 783.8 Kb

less than 1 MB. Let's construct a little bigger data set to see the effect.

First benchmark:

set.seed(45L)
df1 <- data.frame(x=sample(paste0("V", 1:1000), 1e7, TRUE), 
                  y = sample(1e2, 1e7, TRUE), stringsAsFactors=FALSE)
df2 <- data.frame(x=sample(paste0("V", 1:700), 1e6, TRUE),
                  y=sample(1e2, 1e6, TRUE), stringsAsFactors=FALSE)


print(object.size(df1), units="Mb") # 114.5Mb

system.time(ans1 <- df2 %dtIN% df1)
#   user  system elapsed 
#  1.896   0.296   2.265 

system.time(ans2 <- df2 %IN% df1)
#   user  system elapsed 
# 13.014   0.510  14.417 

identical(ans1, ans2) # [1] TRUE

Flodel's solution is ~6.3x slower here.

Second benchmark:

Here's another example to try and convince that it really is terribly inefficient ;):

set.seed(1L)
DF1 <- data.frame(x=rnorm(1e7), y=sample(letters, 1e7, TRUE))
DF2 <- data.frame(x=sample(DF1$x, 1e5, TRUE), y=sample(letters, 1e5, TRUE))

require(data.table)
system.time(ans1 <- DF2 %dtIN% DF1)
#    user  system elapsed 
#  35.024   0.884  37.225 

system.time(ans2 <- DF2 %IN% DF1)   ## flodel's earlier answer
#    user  system elapsed 
# 312.931   2.591 319.652 

That's 1/2 a minute vs 5 minutes on only 1 numeric column, ~8.6x. Now who wants to add another numeric column to it and try again :)?

IIUC, @flodel's new solution using interaction shouldn't be much different because, it still stores them as "factors", where the factor levels have to be characters..

But this one actually started swapping...

system.time(ans3 <- interaction(DF2) %in% interaction(DF1))
## Had to stop after ~3 min because it took 5.5GB and started to SWAP. 
share|improve this answer
    
The base equivalent: tail(duplicated(rbind(df1, df2)), nrow(df2)). Let's note that it assumes df2 has no duplicates. –  flodel May 31 '14 at 15:18
    
@flodel, except that base:::duplicated will paste all the columns together (which means, coercing to character), which is the same as what the OP has done. –  Arun May 31 '14 at 15:35
    
Why are you concerned about paste and coercion to character? –  flodel May 31 '14 at 15:43
    
Because it's just a waste of time, the time spent on coercion. –  Arun May 31 '14 at 15:45

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