# Calculating the mean, standard error and % in R for a data frame

I have a data frame with following structure, `dput(scoreDF)`:

``````scoreDF <- structure(list(ID = c(1, 2), Status = structure(c(2L, 1L),
.Label = c("Fail", "Pass"), class = "factor"), Subject_1_Score = c(100, 25),
Subject_2_Score = c(50, 76)), .Names = c("ID", "Status", "Subject_1_Score",
"Subject_2_Score"), row.names = c(NA, -2L), class = "data.frame")
``````

Now, I need to come up with the % of students who passed and failed, mean of the students who passed and failed, standard error for the same.

For standard error, I have defined a function as follows:

``````stdErr <- function(x) {sd(x)/ sqrt(length(x))}
``````

where I expect `x` to be a vector whose standard error needs to be calculated.

I have seen the doc for `ddply`, but I am not able to figure out how to calculate the % i.e. (number of passes)/ (total count) and standard error for the data frame above.

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This is not a reproducible question. See e.g. stackoverflow.com/questions/5963269/… for inspiration. –  Dirk Eddelbuettel Oct 11 '12 at 20:18
no need for `plyr` if I understand your question. `nrow(Data[Data\$Status=='Pass',])/nrow(Data)`. Unless you want to split on `ID`... `ddply(Data, .(ID), summarise, sum(Status=='Pass')/length(Status)` –  Justin Oct 11 '12 at 20:19
@Justin: I was hoping of coming up with a way where I do not have to hard code the values, like `Status == 'Pass'`. This is why I was trying to find something using `ddply`. Is it possible to summarise by `Status` instead of `ID` –  name_masked Oct 11 '12 at 21:07
I don't understand how you can calculate `# passes / total` without "hard coding" that fact somewhere. –  Justin Oct 11 '12 at 23:54

You can use tapply to calculate group statistics. If your data frame is called students then to calculate mean by pass/fail you would specify:

``````tapply(students\$Subject_1_Score, students\$Status, FUN=mean)
``````

For the standard error substitute your stdErr function for mean.

If you want to calculate something across multiple columns, you can index x:

``````tapply(students[,2:3], students\$Status, FUN=mean)
``````

To calculate percent of students that passed:

``````dim(students[students\$Status == "Pass" ,])[1] / dim(students)[1]
``````

Or by score:

``````dim(students[students\$Subject_1_Score >= 65 ,])[1] / dim(students)[1]
``````

The above is a dataframe example of this type of vector statement using indexing:

``````length(x[x == "Pass"]) / length(x)
``````

To calculate a function across rows or columns you can use `apply`.

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`standard error substitute your stdErr function for mean.` .. but they are not same right? –  name_masked Oct 11 '12 at 20:53
The FUN argument is to pass a function to tapply. If you want to use your stdErr function: tapply(students\$Subject_1_Score, students\$Status, FUN=stdErr) –  Jeffrey Evans Oct 11 '12 at 20:57