# For each row return the column name of the largest value

I have a roster of employees, and I need to know at what department they are in most often. It is trivial to tabulate employee ID against department name, but it is trickier to return the department name, rather than the number of roster counts, from the frequency table. A simple example below (column names = departments, row names = employee ids).

``````DF <- matrix(sample(1:9,9),ncol=3,nrow=3)
DF <- as.data.frame.matrix(DF)
> DF
V1 V2 V3
1  2  7  9
2  8  3  6
3  1  5  4
``````

Now how do I get

``````> DF2
RE
1 V3
2 V1
3 V2
``````
• how big is your actual data?
– Arun
Commented Jul 18, 2013 at 23:51
• @Arun > dim(test) [1] 26746 18 Commented Jul 18, 2013 at 23:57
• An interesting generalization would be the largest n values' column names per row Commented Sep 7, 2016 at 0:07

One option using your data (for future reference, use `set.seed()` to make examples using `sample` reproducible):

``````DF <- data.frame(V1=c(2,8,1),V2=c(7,3,5),V3=c(9,6,4))

colnames(DF)[apply(DF,1,which.max)]
[1] "V3" "V1" "V2"
``````

A faster solution than using `apply` might be `max.col`:

``````colnames(DF)[max.col(DF,ties.method="first")]
#[1] "V3" "V1" "V2"
``````

...where `ties.method` can be any of `"random"` `"first"` or `"last"`

This of course causes issues if you happen to have two columns which are equal to the maximum. I'm not sure what you want to do in that instance as you will have more than one result for some rows. E.g.:

``````DF <- data.frame(V1=c(2,8,1),V2=c(7,3,5),V3=c(7,6,4))
apply(DF,1,function(x) which(x==max(x)))

[[1]]
V2 V3
2  3

[[2]]
V1
1

[[3]]
V2
2
``````
• If I have two equal columns I usually just pick the first. These are border cases which do not upset my statistical analysis. Commented Jul 18, 2013 at 23:59
• @dmvianna - using `which.max` will be fine then. Commented Jul 19, 2013 at 0:03
• I'm assuming the order is preserved, so I can create a new column with this vector that will align correctly to the employees IDs. Is that correct? Commented Jul 19, 2013 at 0:05
• `apply` converts the `data.frame` to `matrix` internally. You may not see a performance difference on these dimensions though.
– Arun
Commented Jul 19, 2013 at 0:07
• @PankajKaundal - assuming distinct values, how about this `colnames(DF)[max.col(replace(DF, cbind(seq_len(nrow(DF)), max.col(DF,ties.method="first")), -Inf), "first")]` Commented Apr 19, 2016 at 22:14

One solution could be to reshape the date from wide to long putting all the departments in one column and counts in another, group by the employer id (in this case, the row number), and then filter to the department(s) with the max value. There are a couple of options for handling ties with this approach too.

``````library(tidyverse)

# sample data frame with a tie
df <- data_frame(V1=c(2,8,1),V2=c(7,3,5),V3=c(9,6,5))

# If you aren't worried about ties:
df %>%
rownames_to_column('id') %>%  # creates an ID number
gather(dept, cnt, V1:V3) %>%
group_by(id) %>%
slice(which.max(cnt))

# A tibble: 3 x 3
# Groups:   id [3]
id    dept    cnt
<chr> <chr> <dbl>
1 1     V3       9.
2 2     V1       8.
3 3     V2       5.

# If you're worried about keeping ties:
df %>%
rownames_to_column('id') %>%
gather(dept, cnt, V1:V3) %>%
group_by(id) %>%
filter(cnt == max(cnt)) %>% # top_n(cnt, n = 1) also works
arrange(id)

# A tibble: 4 x 3
# Groups:   id [3]
id    dept    cnt
<chr> <chr> <dbl>
1 1     V3       9.
2 2     V1       8.
3 3     V2       5.
4 3     V3       5.

# If you're worried about ties, but only want a certain department, you could use rank() and choose 'first' or 'last'
df %>%
rownames_to_column('id') %>%
gather(dept, cnt, V1:V3) %>%
group_by(id) %>%
mutate(dept_rank  = rank(-cnt, ties.method = "first")) %>% # or 'last'
filter(dept_rank == 1) %>%
select(-dept_rank)

# A tibble: 3 x 3
# Groups:   id [3]
id    dept    cnt
<chr> <chr> <dbl>
1 2     V1       8.
2 3     V2       5.
3 1     V3       9.

# if you wanted to keep the original wide data frame
df %>%
rownames_to_column('id') %>%
left_join(
df %>%
rownames_to_column('id') %>%
gather(max_dept, max_cnt, V1:V3) %>%
group_by(id) %>%
slice(which.max(max_cnt)),
by = 'id'
)

# A tibble: 3 x 6
id       V1    V2    V3 max_dept max_cnt
<chr> <dbl> <dbl> <dbl> <chr>      <dbl>
1 1        2.    7.    9. V3            9.
2 2        8.    3.    6. V1            8.
3 3        1.    5.    5. V2            5.
``````

One option from `dplyr 1.0.0` could be:

``````DF %>%
rowwise() %>%
mutate(row_max = names(.)[which.max(c_across(everything()))])

V1    V2    V3 row_max
<dbl> <dbl> <dbl> <chr>
1     2     7     9 V3
2     8     3     6 V1
3     1     5     4 V2
``````

In some contexts, it could be safer to use `pmap()` (requires `purrr`):

``````DF %>%
mutate(row_max = pmap_chr(across(everything()), ~ names(c(...)[which.max(c(...))])))
``````

Sample data:

``````DF <- structure(list(V1 = c(2, 8, 1), V2 = c(7, 3, 5), V3 = c(9, 6,
4)), class = "data.frame", row.names = c(NA, -3L))
``````
• +1 for your `purrr` solution I had to use `mutate(row_max = unlist(purrr::pmap(across(everything()), ~ names(c(...)[which.max(c(...))]))))` to get this as a column in my dataframe. Otherwise, it returns a list Commented Oct 19, 2022 at 18:32
• @mikey if you use map_chr(), then I returns a character vector. I updated my post :) Commented Oct 19, 2022 at 19:52
• what if I dont want to look at all columns and only three specific ones?
– Lenn
Commented Apr 11 at 12:39

Based on the above suggestions, the following `data.table` solution worked very fast for me:

``````library(data.table)

set.seed(45)
DT <- data.table(matrix(sample(10, 10^7, TRUE), ncol=10))

system.time(
DT[, col_max := colnames(.SD)[max.col(.SD, ties.method = "first")]]
)
#>    user  system elapsed
#>    0.15    0.06    0.21
DT[]
#>          V1 V2 V3 V4 V5 V6 V7 V8 V9 V10 col_max
#>       1:  7  4  1  2  3  7  6  6  6   1      V1
#>       2:  4  6  9 10  6  2  7  7  1   3      V4
#>       3:  3  4  9  8  9  9  8  8  6   7      V3
#>       4:  4  8  8  9  7  5  9  2  7   1      V4
#>       5:  4  3  9 10  2  7  9  6  6   9      V4
#>      ---
#>  999996:  4  6 10  5  4  7  3  8  2   8      V3
#>  999997:  8  7  6  6  3 10  2  3 10   1      V6
#>  999998:  2  3  2  7  4  7  5  2  7   3      V4
#>  999999:  8 10  3  2  3  4  5  1  1   4      V2
#> 1000000: 10  4  2  6  6  2  8  4  7   4      V1
``````

And also comes with the advantage that can always specify what columns `.SD` should consider by mentioning them in `.SDcols`:

``````DT[, MAX2 := colnames(.SD)[max.col(.SD, ties.method="first")], .SDcols = c("V9", "V10")]
``````

In case we need the column name of the smallest value, as suggested by @lwshang, one just needs to use `-.SD`:

``````DT[, col_min := colnames(.SD)[max.col(-.SD, ties.method = "first")]]
``````
• I had a similar requirement but want to get the column name having the minimum value for each row.....we don't seem to have min.col in R.....would you know what would be the equivalent solution? Commented Feb 26, 2017 at 18:38
• Hi @user1412. Thanks for your interesting question. I don't have any idea right now other than using the `which.min` in something that would look like: `DT[, MIN := colnames(.SD)[apply(.SD,1,which.min)]]` or `DT[, MIN2 := colnames(.SD)[which.min(.SD)], by = 1:nrow(DT)]` on the dummy data above. This doesn't consider ties and returns only the first minimum. Maybe consider asking a separate question. I would be curious as well what other answers you would get. Commented Feb 28, 2017 at 10:09
• A trick to get minimum column is sending the negative of the data.frame into max.col, like: `colnames(.SD)[max.col(-.SD, ties.method="first")]`. Commented Mar 9, 2018 at 14:08

If you're interested in a `data.table` solution, here's one. It's a bit tricky since you prefer to get the id for the first maximum. It's much easier if you'd rather want the last maximum. Nevertheless, it's not that complicated and it's fast!

Here I've generated data of your dimensions (26746 * 18).

### Data

``````set.seed(45)
DF <- data.frame(matrix(sample(10, 26746*18, TRUE), ncol=18))
``````

### `data.table` answer:

``````require(data.table)
DT <- data.table(value=unlist(DF, use.names=FALSE),
colid = 1:nrow(DF), rowid = rep(names(DF), each=nrow(DF)))
setkey(DT, colid, value)
t1 <- DT[J(unique(colid), DT[J(unique(colid)), value, mult="last"]), rowid, mult="first"]
``````

### Benchmarking:

``````# data.table solution
system.time({
DT <- data.table(value=unlist(DF, use.names=FALSE),
colid = 1:nrow(DF), rowid = rep(names(DF), each=nrow(DF)))
setkey(DT, colid, value)
t1 <- DT[J(unique(colid), DT[J(unique(colid)), value, mult="last"]), rowid, mult="first"]
})
#   user  system elapsed
#  0.174   0.029   0.227

# apply solution from @thelatemail
system.time(t2 <- colnames(DF)[apply(DF,1,which.max)])
#   user  system elapsed
#  2.322   0.036   2.602

identical(t1, t2)
# [1] TRUE
``````

It's about 11 times faster on data of these dimensions, and `data.table` scales pretty well too.

### Edit: if any of the max ids is okay, then:

``````DT <- data.table(value=unlist(DF, use.names=FALSE),
colid = 1:nrow(DF), rowid = rep(names(DF), each=nrow(DF)))
setkey(DT, colid, value)
t1 <- DT[J(unique(colid)), rowid, mult="last"]
``````
• I actually dont' care if it is the first or last maximum. I'm going for simplicity first, but I'm sure a data.table solution will come handy in the future, thanks! Commented Jul 19, 2013 at 0:48

## A `dplyr` solution:

Idea:

• add rowids as a column
• reshape to long format
• filter for max in each group

Code:

``````DF = data.frame(V1=c(2,8,1),V2=c(7,3,5),V3=c(9,6,4))
DF %>%
rownames_to_column() %>%
gather(column, value, -rowname) %>%
group_by(rowname) %>%
filter(rank(-value) == 1)
``````

Result:

``````# A tibble: 3 x 3
# Groups:   rowname [3]
rowname column value
<chr>   <chr>  <dbl>
1 2       V1         8
2 3       V2         5
3 1       V3         9
``````

This approach can be easily extended to get the top `n` columns. Example for `n=2`:

``````DF %>%
rownames_to_column() %>%
gather(column, value, -rowname) %>%
group_by(rowname) %>%
mutate(rk = rank(-value)) %>%
filter(rk <= 2) %>%
arrange(rowname, rk)
``````

Result:

``````# A tibble: 6 x 4
# Groups:   rowname [3]
rowname column value    rk
<chr>   <chr>  <dbl> <dbl>
1 1       V3         9     1
2 1       V2         7     2
3 2       V1         8     1
4 2       V3         6     2
5 3       V2         5     1
6 3       V3         4     2
``````
• Could you comment on the difference between this approach and sbha's answer above? They look about the same to me. Commented Nov 6, 2018 at 14:46
• What about if you have several identifying columns and need those to be ignored from the ranking? Commented Apr 18 at 21:46

A simple `for` loop can also be handy:

``````> df<-data.frame(V1=c(2,8,1),V2=c(7,3,5),V3=c(9,6,4))
> df
V1 V2 V3
1  2  7  9
2  8  3  6
3  1  5  4
> df2<-data.frame()
> for (i in 1:nrow(df)){
+   df2[i,1]<-colnames(df[which.max(df[i,])])
+ }
> df2
V1
1 V3
2 V1
3 V2
``````

This is a fast and simple tidyverse solution, that can easily be applied to any subset of columns in a `data.frame`. The version below also uses `ifelse` to add missing values if all columns are 0. The missing values would be useful if, e.g., someone wants to use it to recombine one-hot encoded columns. It works on the data in the question, but here's an example of a one-hot encoded data set that it also works on.

``````data <- data.frame(
oh_a = c(1,0,0,1,0,0)
,oh_b = c(0,1,1,0,0,0)
,oh_c = c(0,0,0,0,1,0)
,d = c("l","m","n","o","p","q"))

f <- function(x){ifelse(rowSums(x)==0, NA, names(x)[max.col(x, "first")])}
data %>%
mutate(transformed = f(across(starts_with("oh"))))
``````

output:

``````  oh_a oh_b oh_c d transformed
1    1    0    0 l        oh_a
2    0    1    0 m        oh_b
3    0    1    0 n        oh_b
4    1    0    0 o        oh_a
5    0    0    1 p        oh_c
6    0    0    0 q        <NA>
``````

Here is an answer that works with data.table and is simpler. This assumes your data.table is named `yourDF`:

``````j1 <- max.col(yourDF[, .(V1, V2, V3, V4)], "first")
yourDF\$newCol <- c("V1", "V2", "V3", "V4")[j1]
``````

Replace `("V1", "V2", "V3", "V4")` and `(V1, V2, V3, V4)` with your column names

This one is fast:

``````with(DF, {
names(DF)[(V1 > V2 & V1 > V3) * 1 + (V2 > V3 & V2 > V1) * 2 + (V3 > V1 & V3 > V2)*3]
})
``````