I have a data frame that looks as follows:

```
> df <- data_frame(g = c('A', 'A', 'B', 'B', 'B', 'C'), x = c(7, 3, 5, 9, 2, 4))
> df
Source: local data frame [6 x 2]
g x
1 A 7
2 A 3
3 B 5
4 B 9
5 B 2
6 C 4
```

I know how to add a column with the maximum `x`

value for each group `g`

:

```
> df %>% group_by(g) %>% mutate(x_max = max(x))
Source: local data frame [6 x 3]
Groups: g
g x x_max
1 A 7 7
2 A 3 7
3 B 5 9
4 B 9 9
5 B 2 9
6 C 4 4
```

But what I would like is to get is the maximum `x`

value for each group `g`

, *excluding the x value in each row*.

For the given example, the desired output would look like this:

```
Source: local data frame [6 x 3]
Groups: g
g x x_max x_max_exclude
1 A 7 7 3
2 A 3 7 7
3 B 5 9 9
4 B 9 9 5
5 B 2 9 9
6 C 4 4 NA
```

I thought I might be able to use `row_number()`

to remove particular elements and take the max of what remained, but hit warning messages and got incorrect `-Inf`

output:

```
> df %>% group_by(g) %>% mutate(x_max = max(x), r = row_number(), x_max_exclude = max(x[-r]))
Source: local data frame [6 x 5]
Groups: g
g x x_max r x_max_exclude
1 A 7 7 1 -Inf
2 A 3 7 2 -Inf
3 B 5 9 1 -Inf
4 B 9 9 2 -Inf
5 B 2 9 3 -Inf
6 C 4 4 1 -Inf
Warning messages:
1: In max(c(4, 9, 2)[-1:3]) :
no non-missing arguments to max; returning -Inf
2: In max(c(4, 9, 2)[-1:3]) :
no non-missing arguments to max; returning -Inf
3: In max(c(4, 9, 2)[-1:3]) :
no non-missing arguments to max; returning -Inf
```

What is the most {readable, concise, efficient} way to get this output in dplyr? Any insight into why my attempt using `row_number()`

doesn't work would also be much appreciated. Thanks for the help.

`x`

value for each group (returning a data_frame with 3 rows). But what I want is a data_frame with the same number of rows as the input table, where the value at row`r`

gives the maximum`x`

value in group`g`

, excluding row`r`

. See the "desired output" above for a concrete example.