# Assign pass/fail value based on mean in large dataset

this might be a simple question but I was hoping someone could point me in the right direction. I have a sample dataset of:

``````dfrm <- list(L = c("A","B","P","C","D","E","P","F"), J=c(2,2,1,2,2,2,1,2), K=c(4,3,10,16,21,3,17,2))
dfrm <-as.data.frame(dfrm)
dfrm
L J  K
1 A 2  4
2 B 2  3
3 P 1 10
4 C 2 16
5 D 2 21
6 E 2  3
7 P 1 17
8 F 2  2
``````

Column J specifies the type of variable that is defined in K. I want to be able to take the mean of the K values that have a 1 assigned next to them. In this example it would be 10 and 17

``````T = c(10,17)
mean(T)
13.5
``````

Next I want to be able to assign a pass/fail rank, where pass = 1, fail = 0 to identify whether the number in column K is larger than the mean.

The final data set should look like:

``````cdfrm <- list(L = c("A","B","P","C","D","E","P","F"), J=c(2,2,1,2,2,2,1,2), K=c(4,3,10,16,21,3,17,2),C = c(0,0,0,1,1,0,1,0))
cdfrm <-as.data.frame(cdfrm)
cdfrm
L J  K C
1 A 2  4 0
2 B 2  3 0
3 P 1 10 0
4 C 2 16 1
5 D 2 21 1
6 E 2  3 0
7 P 1 17 1
8 F 2  2 0
``````

this seems so basic, i am sorry guys, I just don't know what I am overthinking.

-
+1 for providing an example and clearly stating the desired result. A lot of what yuo're trying to achieve is described in various sections of the Introduction to R (cran.r-project.org/doc/manuals/R-intro.html). –  Roman Luštrik Jul 22 '11 at 9:07

There are two steps in the solution. The first is to calculate the mean for the value you are interested in. In other words, take the mean of a subset of values in your data.frame. R has a handy function to calculate subsets, called `subset`. Here it is in action:

``````meanK <- mean(subset(dfrm, subset=J==1, select=K))
meanK
K
13.5
``````

Next, you want to compare column K in your data frame with the mean value we have just calculated. This is a straightforward vector comparison:

``````dfrm\$Pass <- dfrm\$K>meanK
dfrm
L J  K  Pass
1 A 2  4 FALSE
2 B 2  3 FALSE
3 P 1 10 FALSE
4 C 2 16  TRUE
5 D 2 21  TRUE
6 E 2  3 FALSE
7 P 1 17  TRUE
8 F 2  2 FALSE
``````
-
Note that for all intents and purposes TRUE corresponds to 1 and FALSE to 0 –  Sacha Epskamp Jul 22 '11 at 8:57
Yepp, you can prove that with `as.numeric(c(TRUE, FALSE, FALSE, TRUE))`. –  Roman Luštrik Jul 22 '11 at 11:30

Here's how to do it in one line

``````transform(dfrm, C = K > sapply(split(dfrm\$K, dfrm\$J), mean)[J])
``````

`split` groups the values of `K` according to the values of `J` and `sapply(..., mean)` calculates group wise means.

-