sample df:

```
dat <- data.frame(position = c("A", "B", "B", "A", "B", "A"),
choice = c("A", "A", "B", "B", "A", "B"))
position choice
1 A A
2 B A
3 B B
4 A B
5 B A
6 A B
```

I am trying to make another column in the dataframe so that if the two columns "position" and "choice" have the same alphabetic value, then the new column will say something, if not it will say something else:

```
position choice value
1 A A ok
2 B A no
3 B B ok
4 A B no
5 B A no
6 A B no
```

So far I tried to make a new column with the same value of "choice" and then using lapply or sapply to replace the values with a conditional like this:

```
dat$value <- dat$choice
dat$choice[] <- lapply(dat$choice, function(x)
ifelse(x == dat$position, "ok", x))
```

But it doesn't seem to work, there must be something wrong with the way I referred to "position". In fact it replaces all the values with the whole "position" column as a vector instead of the values one by one -- e.g. output: c("A", "A", "ok", "ok", "A", "ok") or viceversa c("ok", "ok", "B", "B", "ok", "B").

sapply, on the other hand, replaces everything with NAs.

Something else I've tried is this:

```
dat$value <- dat$choice
for(i in 1:length(dat_nat_last$choice)){
if(dat$value [i] == dat$choice[i]) {
dat$value [i] = "ok"
}
else {
dat$value [i] = "no"
}
}
```

Which returns the error "Error in dat$value[i] == dat[i] : comparison of these types is not implemented"

Any suggestion?

`lapply`

or loops for this.`==`

is vectorized. Just do`dat$value <- dat$position == dat$choice`

– Gregor - reinstate Monica Jul 27 '17 at 15:25`ifelse`

is vectorised. This means that the`lapply`

is looping over each value of`dat$choice`

and, at each value, then looping over all values in`dat$position`

. If you want to use`ifelse`

then you only need to do`dat$value <- ifelse(dat$choice == dat$position, "ok", "no")`

– Eumenedies Jul 27 '17 at 15:29