# Combine mutate with conditional values

In a large dataframe ("myfile") with four columns I have to add a fifth column with values conditonally based on the first four columns. Recently I have become a huge fan of dplyr, mainly because of its speed in large datasets. So I was wondering if I could deal with my problem using the mutate function.

My dataframe (actually a shorter version of it) looks a bit like this:

``````  V1 V2 V3 V4
1  1  2  3  5
2  2  4  4  1
3  1  4  1  1
4  4  5  1  3
5  5  5  5  4
``````

The values of the fifth column (V5) are based on some conditional rules:

``````if (V1==1 & V2!=4){
V5 <- 1
}
else if (V2==4 & V3!=1){
V5 <- 2
}
else {
V5 <- 0
}
``````

Now I want to use the mutate function to use these rules on all rows (so I don't have to use a slow loop). Something like this (and yes, I know it doesn't work this way!):

``````myfile <- mutate(myfile, if (V1==1 & V2!=4){V5 = 1}
else if (V2==4 & V3!=1){V5 = 2}
else {V5 = 0})
``````

This should be the result:

``````  V1 V2 V3 V4 V5
1  1  2  3  5  1
2  2  4  4  1  2
3  1  4  1  1  0
4  4  5  1  3  0
5  5  5  5  4  0
``````

How to do this in `dplyr`?

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Try this:

``````> myfile %>% mutate(V5 = (V1 == 1 & V2 != 4) + 2 * (V2 == 4 & V3 != 1))
V1 V2 V3 V4 V5
1  1  2  3  5  1
2  2  4  4  1  2
3  1  4  1  1  0
4  4  5  1  3  0
5  5  5  5  4  0
``````

or this:

``````> myfile %>% mutate(V5 = ifelse(V1 == 1 & V2 != 4, 1, ifelse(V2 == 4 & V3 != 1, 2, 0)))
V1 V2 V3 V4 V5
1  1  2  3  5  1
2  2  4  4  1  2
3  1  4  1  1  0
4  4  5  1  3  0
5  5  5  5  4  0
``````

Suggest you get a better name for your data frame. myfile makes it seem as if it holds a file name.

Above used this input:

``````myfile <-
structure(list(V1 = c(1L, 2L, 1L, 4L, 5L), V2 = c(2L, 4L, 4L,
5L, 5L), V3 = c(3L, 4L, 1L, 1L, 5L), V4 = c(5L, 1L, 1L, 3L, 4L
)), .Names = c("V1", "V2", "V3", "V4"), class = "data.frame", row.names = c("1",
"2", "3", "4", "5"))
``````

Update Since originally posted dplyr has changed `%.%` to `%>%` so have modified answer accordingly.

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I tried your second solution. I got this error: Error in mutate_impl(.data, named_dots(...), environment()) : REAL() can only be applied to a 'numeric', not a 'logical' Do you know what's going wrong? – user1983395 Mar 11 '14 at 22:10
I discovered a way which allows you to not nest the `ifelse` statements: `myfile %>% mutate(V5 = ifelse(V1 == 1 & V2 != 4, 1, 0), V5 = ifelse(V2 == 4 & V3 != 1, 2, V5))` – Alex Sep 18 '14 at 5:22

It looks like `derivedFactor` from the `mosaic` package was designed for this. In this example, it would look something like:

``````library(mosaic)
myfile <- mutate(myfile, V5 = derivedFactor(
"1" = (V1==1 & V2!=4),
"2" = (V2==4 & V3!=1),
.method = "first",
.default = 0
))
``````

(If you want the outcome to be numeric instead of a factor, wrap the `derivedFactor` with an `as.numeric`.)

Note that the `.default` option combined with `.method = "first"` sets the "else" condition -- this approach is described in the help file for `derivedFactor`.

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