I'm new to R. I have a problem to solve, and a working function below that solves it nicely (in decent time). But, from what I'm reading on R tutorials, and here on SO, I feel like I'm doing way too much work to solve it. Is there some fancy R way to collapse this all into a few lines?

The problem to solve: Given a CSV file of data of character data, and a "flag" argument, extract the value at position [row, 1]. "row" is calculated to be the minimum value from column "InterestingColumn" for "flag a", the maximum value from column "Interesting Column" for "flag b", or the n-th value defined by a numeric "flag". The output should be grouped by the unique values of "InterestingColumn". The returned result should be a data frame. The column schema is known, but the length of the file is not.

My instinct is that I should be able to get rid of the for loop altogether, and also that my reconstruction of the matrix with rbind each time is inefficient (like this?) Any tutelage would be appreciated, thanks!

```
myfunc <- function(flag = "a") {
csv <- read.csv("data.csv", colClasses = "character")
col <- unique(csv$InterestingColumn)
output <- NULL
for (i in 1:length(col)) {
sub <- subset(csv, InterestingColumn == col[i])
vals <- as.numeric(sub[, 12])
if (flag == "a") {
output <- rbind(output, matrix(c(sub[which.min(vals),1], col[i]), ncol = 2))
}
else if (flag == "b") {
output <- rbind(output, matrix(c(sub[which.max(vals),1], col[i]), ncol = 2))
}
else if (is.numeric(flag)) {
output <- rbind(output, matrix(c(sub[flag,1], col[i]), ncol = 2))
}
colnames(output) <- c("data", "col")
as.data.frame(output)
}
}
```