The usual answer would be via `which.max()`

however, do note that this will return only the first of the maximums if there are two or more observations taking the maximum value.

An alternative is `which(x == max(x))`

, which would return all value taking the maximum in the result of a tie.

You can then use the index returned to select the series maximum. Handling `NA`

s is covered below to try to keep the initial discussion simple.

```
require("zoo")
set.seed(1)
m <- matrix(runif(50), ncol = 5)
colnames(m) <- paste0("Series", seq_len(ncol(m)))
ind <- seq_len(nrow(m))
mz <- zoo(m, order.by = ind)
> apply(mz, 1, which.max)
1 2 3 4 5 6 7 8 9 10
3 5 5 1 4 1 1 2 3 2
> apply(mz, 1, function(x) which(x == max(x)))
1 2 3 4 5 6 7 8 9 10
3 5 5 1 4 1 1 2 3 2
```

So use that to select the series name

```
i1 <- apply(mz, 1, function(x) which(x == max(x)))
colnames(mz)[i1]
> i1 <- apply(mz, 1, function(x) which(x == max(x)))
> colnames(mz)[i1]
[1] "Series3" "Series5" "Series5" "Series1" "Series4" "Series1" "Series1"
[8] "Series2" "Series3" "Series2"
```

### Handling tied maximums

To illustrate the different behaviour, copy the maximum from month 1 (series 3) into series 1

```
mz2 <- mz ## copy
mz2[1,1] <- mz[1,3]
mz2[1,]
> mz2[1,]
1 0.9347052 0.2059746 0.9347052 0.4820801 0.8209463
```

Now try the two approaches again

```
> apply(mz2, 1, which.max)
1 2 3 4 5 6 7 8 9 10
1 5 5 1 4 1 1 2 3 2
> apply(mz2, 1, function(x) which(x == max(x)))
$`1`
Series1 Series3
1 3
.... ## truncated output ###
```

Notice how `which.max`

only returns the maximum in series 1.

To use this approach to select the series name, you need to apply something to the list returned by `apply()`

, e.g.

```
i2 <- apply(mz2, 1, function(x) which(x == max(x)))
lapply(i2, function (i, zobj) colnames(zobj)[i], zobj = mz2)
$`1`
[1] "Series1" "Series3"
$`2`
[1] "Series5"
$`3`
[1] "Series5"
$`4`
[1] "Series1"
$`5`
[1] "Series4"
$`6`
[1] "Series1"
$`7`
[1] "Series1"
$`8`
[1] "Series2"
$`9`
[1] "Series3"
$`10`
[1] "Series2"
```

### Handling `NA`

s

As you have potential for `NA`

s, I would do the following:

```
apply(mz, 1, which.max, na.rm = TRUE) ## as you did already
apply(mz, 1, function(x, na.rm = TRUE) {
if(na.rm) {
x <- x[!is.na(x)]
}
which(x == max(x))
})
```