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Recently I encountered the following problem in my R code. In a function, accepting a data frame as an argument, I needed to add (or replace, if it exists) a column with data calculated based on values of the data frame's original column. I wrote the code, but the testing revealed that data frame extract/replace operations, which I've used, resulted in a loss of the object's special (user-defined) attributes.

After realizing that and confirming that behavior by reading R documentation (, I decided to solve the problem very simply - by saving the attributes before the extract/replace operations and restoring them thereafter:

myTransformationFunction <- function (data) {

  # save object's attributes
  attrs <- attributes(data)

  <data frame transformations; involves extract/replace operations on `data`>

  # restore the attributes
  attributes(data) <- attrs

  return (data)

This approach worked. However, accidentally, I ran across another piece of R documentation (, which offers IMHO an interesting (and, potentially, a more generic?) alternative approach to solving the same problem:

## keeping special attributes: use a class with a
## "" and "[" method: <-

`[.avector` <- function(x,i,...) {
  r <- NextMethod("[")
  mostattributes(r) <- attributes(x)

d <- data.frame(i = 0:7, f = gl(2,4),
                u = structure(11:18, unit = "kg", class = "avector"))
str(d[2:4, -1]) # 'u' keeps its "unit"

I would really appreciate if people here could help by:

  1. Comparing the two above-mentioned approaches, if they are comparable (I realize that the second approach as defined is for data frames, but I suspect it can be generalized to any object);

  2. Explaining the syntax and meaning in the function definition in the second approach, especially, as well as what is the purpose of the line <-

share|improve this question
up vote 1 down vote accepted

I'm answering my own question, since I have just found an SO question (How to delete a row from a data.frame without losing the attributes), answers to which cover most of my questions posed above. However, additional explanations (for R beginners) for the second approach would still be appreciated.


Another solution to this problem has been proposed in an answer to the following SO question: indexing operation removes attributes. Personally, however, I better like the approach, based on creating a new class, as it's IMHO semantically cleaner.

share|improve this answer
The author of the linked question states that the approach of just saving and restoring attributes (the "first approach" in my question's terminology) does not work. However, it seems to work for me and I'm wondering what I'm missing. – Aleksandr Blekh May 24 '14 at 5:04

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