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# Replacing columns names using a data frame in r

I have the matrix

``````m <- matrix(1:9, nrow = 3, ncol = 3, byrow = TRUE,dimnames = list(c("s1", "s2", "s3"),c("tom", "dick","bob")))

tom dick bob
s1   1    2   3
s2   4    5   6
s3   7    8   9

#and the data frame

current<-c("tom", "dick","harry","bob")
replacement<-c("x","y","z","b")
df<-data.frame(current,replacement)

current replacement
1     tom           x
2    dick           y
3   harry           z
4     bob           b

#I need to replace the existing names i.e. df\$current with df\$replacement if
#colnames(m) are equal to df\$current thereby producing the following matrix

m <- matrix(1:9, nrow = 3, ncol = 3, byrow = TRUE,dimnames = list(c("s1", "s2", "s3"),c("x", "y","b")))

x y b
s1 1 2 3
s2 4 5 6
s3 7 8 9
``````

Any advice? Should I use an 'if' loop? Thanks.

-
+1, nice question with example code. – Paul Hiemstra Jul 17 '12 at 8:55

You can use `which` to match the `colnames` from `m` with the values in `df\$current`. Then, when you have the indices, you can subset the replacement colnames from `df\$replacement`.

``````colnames(m) = df\$replacement[which(df\$current %in% colnames(m))]
``````

In the above:

1. `%in%` tests for `TRUE` or `FALSE` for any matches between the objects being compared.
2. `which(df\$current %in% colnames(m))` identifies the indexes (in this case, the row numbers) of the matched names.
3. `df\$replacement[...]` is the basic way to subset the column `df\$replacement` returning only the rows matched with step 2.
-
Could you provide a little more explanation as to how this one liner works? This would make it more readable for beginning R users. – Paul Hiemstra Jul 17 '12 at 8:49
Nice one! Thanks. – Elizabeth Jul 17 '12 at 8:53
@PaulHiemstra, added an explanation--not sure if it is the best. Please feel free to improve upon it or offer suggestions. – A Handcart And Mohair Jul 17 '12 at 8:54
+1, makes the answer much better! Thank you. – Paul Hiemstra Jul 17 '12 at 8:54

A slightly more direct way to find the indices is to use `match`:

``````> id <- match(colnames(m), df\$current)
> id
[1] 1 2 4
> colnames(m) <- df\$replacement[id]
> m
x y b
s1 1 2 3
s2 4 5 6
s3 7 8 9
``````

As discussed below `%in%` is generally more intuitive to use and the difference in efficiency is marginal unless the sets are relatively large, e.g.

``````> n <- 50000 # size of full vector
> m <- 10000 # size of subset
> query <- paste("A", sort(sample(1:n, m)))
> names <- paste("A", 1:n)
> all.equal(which(names %in% query), match(query, names))
[1] TRUE
> library(rbenchmark)
> benchmark(which(names %in% query))
test replications elapsed relative user.self sys.self user.child sys.child
1 which(names %in% query)          100   0.267        1     0.268        0          0         0
> benchmark(match(query, names))
test replications elapsed relative user.self sys.self user.child sys.child
1 match(query, names)          100   0.172        1     0.172        0          0         0
``````
-
+1 -- `%in%` and `match` are very similar. My preference is usually for `which` and `%in%` because it's easier for me to remember, since it reads something like: "Which of these values (`df\$current`) is in these other values (`colnames(m)`." With `match` I always have the tendency to use the same format and end up with `NA`s. I don't know if there are any performance issues either way though. – A Handcart And Mohair Jul 17 '12 at 9:13
You're right, `%in%` is more intuitive and therefore better to use in general, `?match` gives more information on the pros and cons. For the geeks amongst us I'll add some timings! – Heather Turner Jul 17 '12 at 9:50