I apologize as this seems to be a basic question but I have been searching for a better solution but haven't found it. I have data of the following type.

```
myDATA<-data.frame(rbind(c("red","blue","green", "dog","hat","cat")
,c("blue","green", "blue","dog","hat","cat")
,c("green","blue","blue","dog","hat","cat")
,c("green","red", "blue","dog","hat","cat")
)
)
names(myDATA)<-c(paste("Color",1:3,sep=""),paste("Stim",1:3,sep=""))
myDATA$greenImage<-NA
```

Which gives:

myDATA

```
+-----------------------------------------------------+
| Color1 Color2 Color3 Stim1 Stim2 Stim3 greenImage |
+-----------------------------------------------------+
| 1 red blue green dog hat cat NA |
| 2 blue green blue dog hat cat NA |
| 3 green blue blue dog hat cat NA |
| 4 green red blue dog hat cat NA |
+-----------------------------------------------------+
```

The `Color`

columns correspond with the `Stim`

columns by number, e.g., `Stim1`

is displayed in `Color1`

and so on. For each row, one `Stim`

is displayed in green. I want to find that `Stim`

and save in in a new column called `greenImage`

.

I gather from a number of posts that `apply()`

might be useful here but I have not been able to make it work. My rather inelegant solution has been a loop of the form below,

```
for (i in 1:nrow(myDATA)) {
x <- match("green", unlist(myDATA[i,paste("Color", 1:3, sep="")]))
myDATA[i,"greenImage"] <- as.character(myDATA[i, paste("Stim", x, sep="")])
}
```

Resulting in:

```
myDATA
+-----------------------------------------------------+
| Color1 Color2 Color3 Stim1 Stim2 Stim3 greenImage |
+-----------------------------------------------------+
| 1 red blue green dog hat cat cat |
| 2 blue green blue dog hat cat hat |
| 3 green blue blue dog hat cat dog |
| 4 green red blue dog hat cat dog |
+-----------------------------------------------------+
```

However, the actual dataset has over 10000 rows so my solution is very inefficient. Can anyone suggest an alternative approach that is more efficient?

Thanks in advance!