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I've been working with R for a month or so, and my comprehension of some subtleties is still quite superficial. I have had an issue, which I managed to solve (details below), but I still can't explain precisely why it did not work with the first solution. Note that the example below makes no practical sense for I have simplified it as much as possible so that the problem is quite clear.

ISSUE : Given a data frame with 4 columns (email, first, last, company) :

> users <- data.frame(matrix(vector(), 0, 4, dimnames=list(c(), c("email", "first", "last", "company"))), stringsAsFactors=F)
> users[1,] <- c("robert@redford.com", "Robert", "Redford", "Paramount")
> users[2,] <- c("julia@roberts.com", "Erin", "B.", "Hinkley")
> users[3,] <- c("matt@damon.com", "Will", "H.", "Stanford")
> users[4,] <- c("john@malkovitch.com", "John", "M.", "JM")

I take one particular row :

> user <- users[3,]

When I try to subset the dataframe on a criteria which could have lead to return the previously mentioned row, it returns no result.

> users[users$email == user["email"],]
[1] email   first   last    company
<0 lignes> (ou 'row.names' de longueur nulle)

I instantly thought it was a casting issue (sorry for this bad one)

> users[users$email == as.character(user["email"]),]
           email first last  company
3 matt@damon.com  Will   H. Stanford

However, when I tried to figure out where exactly the issue was, and tried this :

> users[users$email == "matt@damon.com",]
           email first last  company
3 matt@damon.com  Will   H. Stanford

> user["email"] == "matt@damon.com"
  email
3  TRUE

> users[3,]$email == user$email
[1] TRUE

I got quite confused :

  • First, I thought about it as a math problem : if A == B and B == C, then A == C (according to Captain Obvious). So, just replacing a member A by another member B which is supposed to be equal to A (given the "TRUE" statement) in some expression should have no impact on the result of this expression.
  • 3 TRUE != [1] TRUE. I think [1] TRUE is a logical vector of size 1 which first element is TRUE. 3 TRUE is (1x1) matrix row, which column "email" value is TRUE.

My problem is with consistency : either two objects of equal content but different types should be equal, or they should be different. I have a problem with "Sometimes there is type inference, and sometimes not". Is there a rule I can't see beyond this behavior ? (I guess there is one)

Another expression of the behavior I'd like to get is this one :

> unique(users$email) == "matt@damon.com"
[1] FALSE FALSE  TRUE FALSE
> unique(users$email) == user["email"]
  email
3 FALSE

Obviously R does get what I want (considering the fact that it gives me the matching row). But I can't explain (nor use) the result of the second statement. Any explanations / thoughts ?

(note : this is the first question I ever ask on SO, and just by reading the posts I had never realized how hard it was to be clear. Sorry about that.)

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try user[["email"]] –  phonixor Jun 30 at 12:59

1 Answer 1

in normal list situations

users$email == user[["email"]]

however in data.frames things get inconsistent/ a lot worse!

tdf=data.frame(matrix(1:100,10,10))
tdf[] # returns data.frame everything
tdf[1] # returns data.frame first column
tdf[1,1] # returns object as type of the object...
tdf[,1] # returns a vector of the first column
tdf[1,] # returns a data.frame of the first row # eeeeeugh... that is odd....
tdf[2:4] # returns a data.frame with 3 columns
tdf[1,2:4] # returns a data.frame of the first row of 3 colums
tdf[2:4,2:4] # returns a 3x3 data.frame
tdf[2:4,1] # returns a vector of 2:4 row and 1st column
tdf[,2:4] # returns a data.frame with 3 columns

then there is also the double [[]]

do note that in data.frames things get horribly annoying and fugly

tdf[[1]] # gives the first row as a vector
tdf[[1,1]] # gives first element

and pretty much all other combinations gives errors

and assigning stuff to a data.frame or matrix, is an even bigger mess!

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I'm downvoting because of your disparaging language. While use of the [ and [[ operators can be confusing at first, calling this a "mess" or "fugly" is inappropriate and unhelpful. –  Carl Witthoft Jun 30 at 13:57

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