# Subsetting a dataframe by the amount of repetition

If I have a dataframe like this:

``````neu <- data.frame(test1 = c(1,2,3,4,5,6,7,8,9,10,11,12,13,14),
test2 = c("a","b","a","b","c","c","a","c","c","d","d","f","f","f"))
neu
test1 test2
1      1     a
2      2     b
3      3     a
4      4     b
5      5     c
6      6     c
7      7     a
8      8     c
9      9     c
10    10     d
11    11     d
12    12     f
13    13     f
14    14     f
``````

and I would like to select only those values where the level of the factor `test2` appears more than let's say three times, what would be the fastest way?

Thanks very much, didn't really find the right answer in the previous questions.

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Find the rows using:

``````z <- table(neu\$test2)[table(neu\$test2) >= 3] # repeats greater than or equal to 3 times
``````

Or:

``````z <- names(which(table(neu\$test2)>=3))
``````

Then subset with:

``````subset(neu, test2 %in% names(z))
``````

Or:

``````neu[neu\$test2 %in% names(z),]
``````
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Thx that really helped a lot! –  Miri Putzig May 16 '13 at 11:53
Why use `as.list`? Why two `table(.)`? And it's better not to use `subset`. –  Arun May 16 '13 at 11:58
See alternative strategies above. –  Thomas May 16 '13 at 12:48

Here's another way:

`````` with(neu, neu[ave(seq(test2), test2, FUN=length) > 3, ])

#   test1 test2
# 5     5     c
# 6     6     c
# 8     8     c
# 9     9     c
``````
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+1 this is by far the best base solution to me. –  Arun May 17 '13 at 9:36

I'd use `count` from the `plyr` package to perform the counting:

``````library(plyr)
count_result = count(neu, "test2")
matching = with(count_result, test2[freq > 3])
with(neu, test1[test2 %in% matching])
[1] 5 6 8 9
``````
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Awesome, thx a lot you guys –  Miri Putzig May 16 '13 at 11:57

The (better scaling) `data.table` way:

``````library(data.table)
dt = data.table(neu)

dt[dt[, .I[.N >= 3], by = test2]\$V1]
``````

Note: hopefully, in the future, the following simpler syntax will be the fast way of doing this:

``````dt[, .SD[.N >= 3], by = test2]
``````
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