How to preProcess features when some of them are factors?

My question is related to this one regarding categorical data (factors in R terms) when using the Caret package. I understand from the linked post that if you use the "formula interface", some features can be factors and the training will work fine. My question is how can I scale the data with the `preProcess()` function? If I try and do it on a data frame with some columns as factors, I get this error message:

``````Error in preProcess.default(etitanic, method = c("center", "scale")) :
all columns of x must be numeric
``````

See here some sample code:

``````library(earth)
data(etitanic)

a <- preProcess(etitanic, method=c("center", "scale"))
b <- predict(etitanic, a)
``````

Thank you.

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migrated from stats.stackexchange.comDec 24 '12 at 16:00

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It is really the same issue as the post you link to. `preProcess` works only on numeric data and you have:

``````> str(etitanic)
'data.frame':   1046 obs. of  6 variables:
\$ pclass  : Factor w/ 3 levels "1st","2nd","3rd": 1 1 1 1 1 1 1 1 1 1 ...
\$ survived: int  1 1 0 0 0 1 1 0 1 0 ...
\$ sex     : Factor w/ 2 levels "female","male": 1 2 1 2 1 2 1 2 1 2 ...
\$ age     : num  29 0.917 2 30 25 ...
\$ sibsp   : int  0 1 1 1 1 0 1 0 2 0 ...
\$ parch   : int  0 2 2 2 2 0 0 0 0 0 ...
``````

You can't center and scale `pclass` or `sex` as-is so they need to be converted to dummy variables. You can use `model.matrix` or caret's `dummyVars` to do this:

`````` > new <- model.matrix(survived ~ . - 1, data = etitanic)
> colnames(new)
[1] "pclass1st" "pclass2nd" "pclass3rd" "sexmale"   "age"
[6] "sibsp"     "parch"
``````

The `-1` gets rid of the intercept. Now you can run `preProcess` on this object.

btw making `preProcess` ignore non-numeric data is on my "to do" list but it might cause errors for people not paying attention.

Max

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I think we do need only two variables for pclass. (either "pclass1st, pclass2nd" or "pclass2nd, pclass3rd" or "pclass3rd, pclass1st"). Like in case of variable sex, we have considered only sexmale and discarded sexfemale. Correct me if it is not sufficient. – Sandeep Jan 7 '15 at 13:28

Here's a quick way to exclude factors or whatever you'd like from consideration:

``````set.seed(1)
N <- 20
dat <- data.frame(
x = factor(sample(LETTERS[1:5],N,replace=TRUE)),
y = rnorm(N,5,12),
z = rnorm(N,-5,17) + runif(N,2,12)
)

#' Function which wraps preProcess to exclude factors from the model.matrix
ppWrapper <- function( x, excludeClasses=c("factor"), ... ) {
whichToExclude <- sapply( x, function(y) any(sapply(excludeClasses, function(excludeClass) is(y,excludeClass) )) )
processedMat <- predict( preProcess( x[!whichToExclude], ...), newdata=x[!whichToExclude] )
x[!whichToExclude] <- processedMat
x
}

> ppWrapper(dat)
x          y           z
1  C  1.6173595 -0.44054795
2  A -0.2933705 -1.98856921
3  C  1.2177384  0.65420288
4  D -0.8710374  0.62409408
5  D -0.4504202 -0.34048640
6  D -0.6943283  0.24236671
7  E  0.7778192  0.91606677
8  D  0.2184563 -0.44935163
9  C -0.3611408  0.26075970
10 B -0.7066441 -0.23046073
11 D -1.5154339 -0.75549761
12 D  0.4504825  0.38552988
13 B  1.5692675  0.04093040
14 C  0.4127541  0.13161807
15 D  0.5426321  1.09527418
16 B -2.1040322 -0.04544407
17 C  0.6928574  1.12090541
18 B  0.3580960  1.91446230
19 E  0.3619967 -0.89018040
20 A -1.2230522 -2.24567237
``````

You can pass anything you want into `ppWrapper` and it will get passed along to `preProcess`.

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