# R: Count unique values by category

I have data in R that looks like this:

`````` Cnty   Yr   Plt       Spp  DBH Ht Age
1  185 1999 20001 Bitternut  8.0 54  47
2  185 1999 20001 Bitternut  7.2 55  50
3   31 1999 20001    Pignut  7.4 71  60
4   31 1999 20001    Pignut 11.4 85 114
5  189 1999 20001        WO 14.5 80  82
6  189 1999 20001        WO 12.1 72  79
``````

I would like to know the quantity of unique species (Spp) in each county (Cnty). "unique(dfname\$Spp)" gives me a total count of unique species in the data frame, but I would like it by county.

Any help is appreciated! Sorry for the weird formatting, this is my first ever question on SO.

Thanks.

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Welcome to SO. Sharing more about What have you have tried and where you're running into problems will yield better answers. But, to get you started, functions like `aggregate` and `tapply` be helpful. remember to look at the help text from a function using `?aggregate`. –  Justin Apr 23 '13 at 1:14

As Justin mentioned aggregate is probably what you want. If you call your data frame foo, then the following should give you what you want, namely the number of individuals per species assuming that each row with Butternut represents a unique individual belonging to the butternut species. Note I used foo\$Age to calculate the length of the vector, i.e. the number of individuals (row) belonging to each species, but you could use foo\$Ht or foo\$DBH etc.

``````aggregate(foo\$Age, by = foo[c('Spp','Cnty')], length)
``````

Cheers,

Danny

-

I've tried to make your sample data a little bit more interesting. Your sample data presently has just one unique "Spp" per "Cnty".

``````set.seed(1)
mydf <- data.frame(
Cnty = rep(c("185", "31", "189"), times = c(5, 3, 2)),
Yr = c(rep(c("1999", "2000"), times = c(3, 2)),
"1999", "1999", "2000", "2000", "2000"),
Plt = "20001",
Spp = sample(c("Bitternut", "Pignut", "WO"), 10, replace = TRUE),
DBH = runif(10, 0, 15)
)
mydf
#    Cnty   Yr   Plt       Spp       DBH
# 1   185 1999 20001 Bitternut  3.089619
# 2   185 1999 20001    Pignut  2.648351
# 3   185 1999 20001    Pignut 10.305343
# 4   185 2000 20001        WO  5.761556
# 5   185 2000 20001 Bitternut 11.547621
# 6    31 1999 20001        WO  7.465489
# 7    31 1999 20001        WO 10.764278
# 8    31 2000 20001    Pignut 14.878591
# 9   189 2000 20001    Pignut  5.700528
# 10  189 2000 20001 Bitternut 11.661678
``````

Next, as suggested, `tapply` is a good candidate here. Combine `unique` and `length` to get the data you are looking for.

``````with(mydf, tapply(Spp, Cnty, FUN = function(x) length(unique(x))))
# 185 189  31
#   3   2   2
with(mydf, tapply(Spp, list(Cnty, Yr), FUN = function(x) length(unique(x))))
#     1999 2000
# 185    2    2
# 189   NA    2
# 31     1    1
``````

If you're interested in simple tabulation (not of unique values), then you can explore `table` and `ftable`:

``````with(mydf, table(Spp, Cnty))
#            Cnty
# Spp         185 189 31
#   Bitternut   2   1  0
#   Pignut      2   1  1
#   WO          1   0  2
ftable(mydf, row.vars="Spp", col.vars=c("Cnty", "Yr"))
#           Cnty  185       189        31
#           Yr   1999 2000 1999 2000 1999 2000
# Spp
# Bitternut         1    1    0    1    0    0
# Pignut            2    0    0    1    0    1
# WO                0    1    0    0    2    0
``````
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Ananda: Very good answer! You correctly assumed that there existed more than one kind of species per county, which is exactly what I needed counts of. Thank you very much for your help. –  Klaus Louis Apr 23 '13 at 16:56
@KlausLouis, Glad to hear it. If this or any of the other answers were helpful, do consider upvoting them and/or accepting one of them. Thanks, and welcome to Stack Overflow! :) –  Ananda Mahto Apr 23 '13 at 17:04