# How to get number of rows for a specific value in a column

I am trying to get the number of rows for a specific column. I have three columns with Name, Age, and major. How can i find out how many BIO majors there are for example from this list.

I have a DF <- (NAME, YEAR, MAJOR, GPA) I want to have a function so I can eliminate any major with less than 20 people.

so I want something like this, but in actual r code.

DF <- function(x){
##  Y <- get number of people for each major
##  GPA [DF\$Y < 20] <- NA

Any help would be appreciated

-

I think the two methods offered so far are overly complex. Try either of these, the second of which is obviously the "Right way". :-) (Borrowing @gung's example.)

#  1
> tapply( DF\$MAJOR, DF\$MAJOR, length)
BIO ECON HIST  LIT MATH
181  155  297  303   64

#  2
> table(DF\$MAJOR)

BIO ECON HIST  LIT

MATH
181  155  297  303   64

And as far as efficiency?

> system.time( {dt = data.table(DF)
+  foo <- dt[,.N,by=MAJOR] })
user  system elapsed
1.384   0.027   1.417
> system.time(foo<- table(DF\$MAJOR) )
user  system elapsed
0.110   0.025   0.134
#edit:
> system.time( {dt = as.data.table(DF)
+  foo <- dt[,.N,by=MAJOR] })
user  system elapsed
0.064   0.022   0.086

The answer the appended question in the comments of how to associate a tabular result with each student record, look at the ave function and use the first method with either "["-extraction or with subset:

DF\$group.size <- ave(DF\$MAJOR, DF\$MAJOR, length)
newDF <- DF[ DF\$group.size >=20000 , ]
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If you use as.data.table instead of data.table it will be faster. –  GSee Jun 24 '13 at 1:43
It was significantly faster (and added the timing). Faster even than table(), but I'm hoping my point comes across that there was an available base-R method that was quite compact, efficient and did not require an additional package. –  BondedDust Jun 24 '13 at 2:35
I ended up going with something like this, or maybe even exactly this. The other solutions offered were helpful in my thinking about this, but this solution I found was much easier. I needed to have the count in a column in the same data frame so something like this works out well –  user2446334 Jun 24 '13 at 10:18

Again it's the data.table package grouping functionality to the rescue. There is a '.N' notation that means the number of rows in each group, and it gives you exactly what you need. Borrowing from the previous answer:

> N = 1000
> set.seed(2)
> dt <- data.table(NAME=as.character(1:N),
+                  YEAR=sample(c("Freshman","Sophomore","Junior","Senior"),
+                              size=N, replace=T),
+                  MAJOR=sample(c("BIO","ECON","HIST","LIT","MATH"),size=N,
+                               replace=T, prob=c(.20, .15, .30, .30, .05)),
+                  GPA=runif(N, min=0, max=4))
> dt[,.N,by=MAJOR]
MAJOR   N
1:  HIST 297
2:   LIT 303
3:   BIO 181
4:  ECON 155
5:  MATH  64

So it's now a one-liner. And it's fast too (using N=1000000):

> system.time( foo <- cbind(levels(unique(DF\$MAJOR)),
+       lapply(unique(DF\$MAJOR), function(x){ sum(DF\$MAJOR==x) })) )
user    system   elapsed
0.616     0.050     0.665
> dt = data.table(DF)
> system.time( foo <- dt[,.N,by=MAJOR] )
user    system   elapsed
0.039     0.002     0.042
-
+1, that is impressively fast –  gung Jun 20 '13 at 1:25

The basic way to get a count of how many of something you have is to sum up a logical vector where each element of the logical vector is a 1 if the original element is the thing you want to count, or a 0 otherwise.

N = 1000
set.seed(2)
DF <- data.frame(NAME=as.character(1:N),
YEAR=sample(c("Freshman","Sophomore","Junior","Senior"),
size=N, replace=T),
MAJOR=sample(c("BIO","ECON","HIST","LIT","MATH"),size=N,
replace=T, prob=c(.20, .15, .30, .30, .05)),
GPA=runif(N, min=0, max=4))

Thus, we find out how many BIO majors you have by:

sum(DF\$MAJOR=="BIO")
[1] 181

If you wanted to know how many you have for every major that exists, you can get a list of the majors with ?unique, and then apply the function above to the list with ?lapply:

lapply(unique(DF\$MAJOR), function(x){ sum(DF\$MAJOR==x) })

Here's a slightly prettier version:

cbind(levels(unique(DF\$MAJOR)),
lapply(unique(DF\$MAJOR), function(x){ sum(DF\$MAJOR==x) }))
[,1]   [,2]
[1,] "BIO"  297
[2,] "ECON" 303
[3,] "HIST" 181
[4,] "LIT"  155
[5,] "MATH" 64

You should be able to take it from here.

Update: @DWin is right, I was making this too complicated. Since DF\$MAJOR is a factor, you can simply do:

> summary(DF\$MAJOR)
BIO ECON HIST  LIT MATH
181  155  297  303   64
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Thank You, I tried using table() and merging, and it kept running and would never finish the process, may be because I have over a million observations, but other merges work. I will try your strategy. –  user2446334 Jun 19 '13 at 0:11
It does not work exactly, the way I want but still a good jump. WOuld you know hot to then merge it into set with all the students. If I were to have a column of number of kids in major in the large data set how would I do this. Basically from there I then want to remove all students from the large dataset for which the number of people in there major is less than 20 thousand. I planned on using the subset() function, but am still new to r and would greatly appreciate the help –  user2446334 Jun 19 '13 at 0:37
I don't quite follow your comment. Following this operation, you should have a list of counts of majors & be able to tell which majors have fewer students than any given threshold. You can form a new data frame w/o those majors if you want. toExclude = which(DF\$MAJOR%in%c(<list>)); DF2 = DF[-toExclude,]. –  gung Jun 19 '13 at 0:46