First, note that a
matrix and a
data.frame are different things in R. I imagine you have a
data.frame (as that is what is returned by
data.frame's have named columns (if you don't give them ones, generic ones are created for you).
You can subset a
data.frame by indicating both what rows you want and/or what columns you want. The easiest way to specify which rows is with a logical vector, often built out of comparisons using specific columns of the
data.frame. For example
data[["column values"]] == "15" would make a logical vector which is
TRUE if the corresponding entry in the column
column values is the string "15" (since it is in quotes, it is a string, not a number). You can make as complicated a selection criteria as you like (combining logical vectors with
|) to specify the rows you want. This vector becomes the first argument in the indexing.
A list of column names or numbers can be the second argument. If either argument is missing, all rows (or columns) are assumed.
Putting this all together, you get examples like
data[data[["column values"]] == "15", ]
or using an actual data set (
mtcars[mtcars$am == 1, ]
mtcars[mtcars$am == 1 & mtcars$hp > 100, "mpg"]
mtcars[mtcars$am == 1 & mtcars$hp > 100, "mpg", drop=FALSE]
mtcars[mtcars$hp > 100, c("mpg", "carb")]
Take a look at what each of the conditionals (first arguments, e.g.
mtcars$am == 1 & mtcars$hp > 100) return to get a better sense of how indexing works.