# Transforming Data Frame in R

I have a data frame with multiple variables which in turn have multiple categories. I'll like to take each category and convert them to indicator variables.

```V1 V2 V3 V4
xc ab ty ky
xc ab ty kj
xc yi tf kj
cv yi tf kj
bg yt tg kl
bg yu yu kl
```

convert to

```xc cv bg .....
T  F  F......
T  F  F....
T  F  F....
F  T  F....
F  F  T...
F  F  T....
```

i tried

``````newframe <- transform(oldframe, xc = to_column(oldframe\$V1,'xc'))
``````

where to column is

``````to_column = function(col, val){
if (col == val)
'TRUE'  else
'FALSE' }
``````
-
i just tried newframe <- transform(oldframe, xc = (oldframe[,1]=='xc')) which worked but is still a bit cumbersome for a data-set with lots of variable categories –  kogilvie Mar 30 '11 at 20:04
My answer below returns a 0/1 dummy variable via one of the standard ways in R. Let me know if that works :) –  Jay Mar 30 '11 at 20:46

Building on @Jay's answer, we have this as a logical matrix.

Logical matrix version:

``````out <- model.matrix( ~ V1 - 1, data=dat)
out <- matrix(as.logical(out), ncol = ncol(out))
colnames(out) <- with(dat, levels(V1))

> out
bg    cv    xc
[1,] FALSE FALSE  TRUE
[2,] FALSE FALSE  TRUE
[3,] FALSE FALSE  TRUE
[4,] FALSE  TRUE FALSE
[5,]  TRUE FALSE FALSE
[6,]  TRUE FALSE FALSE
``````

All variables at once version:

``````out2 <- sapply(dat, function(x) model.matrix( ~ x - 1))
out2 <- do.call(cbind, out2)
out2 <- matrix(as.logical(out2), ncol = ncol(out2))
colnames(out2) <- unlist(sapply(dat, levels))

> out2
bg    cv    xc    ab    yi    yt    yu    tf    tg    ty
[1,] FALSE FALSE  TRUE  TRUE FALSE FALSE FALSE FALSE FALSE  TRUE
[2,] FALSE FALSE  TRUE  TRUE FALSE FALSE FALSE FALSE FALSE  TRUE
[3,] FALSE FALSE  TRUE FALSE  TRUE FALSE FALSE  TRUE FALSE FALSE
[4,] FALSE  TRUE FALSE FALSE  TRUE FALSE FALSE  TRUE FALSE FALSE
[5,]  TRUE FALSE FALSE FALSE FALSE  TRUE FALSE FALSE  TRUE FALSE
[6,]  TRUE FALSE FALSE FALSE FALSE FALSE  TRUE FALSE FALSE FALSE
yu    kj    kl    ky
[1,] FALSE FALSE FALSE  TRUE
[2,] FALSE  TRUE FALSE FALSE
[3,] FALSE  TRUE FALSE FALSE
[4,] FALSE  TRUE FALSE FALSE
[5,] FALSE FALSE  TRUE FALSE
[6,]  TRUE FALSE  TRUE FALSE
``````

If you don't want this as a full matrix like above, then you can stop with the first line, which has all the model matrices in a list, one for each variable (column) in `dat`, and convert the to a logical. This one-liner does both steps:

``````> lapply(lapply(dat, function(x) model.matrix( ~ x - 1)),
+        function(x) matrix(as.logical(x), ncol = ncol(x)))
\$V1
[,1]  [,2]  [,3]
[1,] FALSE FALSE  TRUE
[2,] FALSE FALSE  TRUE
[3,] FALSE FALSE  TRUE
[4,] FALSE  TRUE FALSE
[5,]  TRUE FALSE FALSE
[6,]  TRUE FALSE FALSE

\$V2
[,1]  [,2]  [,3]  [,4]
[1,]  TRUE FALSE FALSE FALSE
[2,]  TRUE FALSE FALSE FALSE
[3,] FALSE  TRUE FALSE FALSE
[4,] FALSE  TRUE FALSE FALSE
[5,] FALSE FALSE  TRUE FALSE
[6,] FALSE FALSE FALSE  TRUE

\$V3
[,1]  [,2]  [,3]  [,4]
[1,] FALSE FALSE  TRUE FALSE
[2,] FALSE FALSE  TRUE FALSE
[3,]  TRUE FALSE FALSE FALSE
[4,]  TRUE FALSE FALSE FALSE
[5,] FALSE  TRUE FALSE FALSE
[6,] FALSE FALSE FALSE  TRUE

\$V4
[,1]  [,2]  [,3]
[1,] FALSE FALSE  TRUE
[2,]  TRUE FALSE FALSE
[3,]  TRUE FALSE FALSE
[4,]  TRUE FALSE FALSE
[5,] FALSE  TRUE FALSE
[6,] FALSE  TRUE FALSE
``````

And if the variable names are important, then we can modify this to

``````foo <- function(x) {
mat <- matrix(as.logical(x), ncol = ncol(x))
colnames(mat) <- levels(x)
mat
}
lapply(lapply(dat, function(x) model.matrix( ~ x - 1)), foo)
``````
-

You could have a look at the reshape package, it provides functionality to pivot data like this. There are examples of its use at the author's homepage

-

This is one standard approach to creating dummy varaibles from a categorical variable:

``````model.matrix( ~ V1 - 1, data=df)
``````

df is your data.frame as shown in your question. This returns 0/1 binary as your FALSE/TRUE. Hope that helps!

Best regards,

Jay

-
great that helped, but can i do more than one variable at the same time? –  kogilvie Mar 30 '11 at 21:02
+1 nice use of `model.matrix()` –  Gavin Simpson Mar 30 '11 at 22:46