37

I'm working on a prediction problem and I'm building a decision tree in R, I have several categorical variables and I'd like to one-hot encode them consistently in my training and testing set. I managed to do it on my training data with :

temps <- X_train
tt <- subset(temps, select = -output)
oh <- data.frame(model.matrix(~ . -1, tt), CLASS = temps$output)

But I can't find a way to apply the same encoding on my testing set, how can I do that?

5
  • by encoding do you mean creating dummy variables?
    – Esteban PS
    Feb 6, 2018 at 18:26
  • Do it the same way. What is different? Feb 6, 2018 at 18:37
  • Yes I mean creating dummies : for each categorical variable I need to create as many dummy as there are different categories in the variable.
    – xeco
    Feb 6, 2018 at 18:38
  • @Gregor what is diffirent is that some categories might be present in the testing set and not in the training and also the order of the dummies matters and it won't be same for the two sets
    – xeco
    Feb 6, 2018 at 18:42
  • 1
    @xeco I would suggest you to look for vtreat package in R Feb 6, 2018 at 19:10

5 Answers 5

43

I recommend using the dummyVars function in the caret package:

customers <- data.frame(
  id=c(10, 20, 30, 40, 50),
  gender=c('male', 'female', 'female', 'male', 'female'),
  mood=c('happy', 'sad', 'happy', 'sad','happy'),
  outcome=c(1, 1, 0, 0, 0))
customers
id gender  mood outcome
1 10   male happy       1
2 20 female   sad       1
3 30 female happy       0
4 40   male   sad       0
5 50 female happy       0


# dummify the data
dmy <- dummyVars(" ~ .", data = customers)
trsf <- data.frame(predict(dmy, newdata = customers))
trsf
id gender.female gender.male mood.happy mood.sad outcome
1 10             0           1          1        0       1
2 20             1           0          0        1       1
3 30             1           0          1        0       0
4 40             0           1          0        1       0
5 50             1           0          1        0       0

example source

You apply the same procedure to both the training and validation sets.

6
  • 10
    I found that the caret approach (with dummyVars) is about 73% faster than the one_hot() function from the mltools package. Using the microbenchmark package and iris data set, the caret method finishes in 0.025 milliseconds, while the one_hot() method finishes in 0.095 milliseconds.
    – Dale Kube
    Dec 19, 2018 at 0:56
  • 1
    @DaleKube have you included the data.frame(predict(dmy, newdata = customers)) in your benchmark? Apparently dummyVars alone will not give you the actual dummies Apr 21, 2019 at 17:00
  • 3
    If you have a dataframe with different variables, and you want to one-hot encode just some of them, you need to use something like dummyVars(" ~ VARIABLE1 + VARIABLE2", data = customers) Apr 21, 2019 at 17:04
  • 1
    @raffamaiden yes, I included the predict() call and conversion to data.frame.
    – Dale Kube
    Apr 23, 2019 at 1:29
  • Here's an alternative using recipes (tidymodels) package: blog.datascienceheroes.com/… Jul 24, 2019 at 14:54
27

Here's a simple solution to one-hot-encode your category using no packages.

Solution

model.matrix(~0+category)

It needs your categorical variable to be a factor. The factor levels must be the same in your training and test data, check with levels(train$category) and levels(test$category). It doesn't matter if some levels don't occur in your test set.

Example

Here's an example using the iris dataset.

data(iris)
#Split into train and test sets.
train <- sample(1:nrow(iris),100)
test <- -1*train

iris[test,]

    Sepal.Length Sepal.Width Petal.Length Petal.Width   Species
34           5.5         4.2          1.4         0.2    setosa
106          7.6         3.0          6.6         2.1 virginica
112          6.4         2.7          5.3         1.9 virginica
127          6.2         2.8          4.8         1.8 virginica
132          7.9         3.8          6.4         2.0 virginica

model.matrix() creates a column for each level of the factor, even if it is not present in the data. Zero indicates it is not that level, one indicates it is. Adding the zero specifies that you do not want an intercept or reference level and is equivalent to -1.

oh_train <- model.matrix(~0+iris[train,'Species'])
oh_test <- model.matrix(~0+iris[test,'Species'])

#Renaming the columns to be more concise.
attr(oh_test, "dimnames")[[2]] <- levels(iris$Species)


  setosa versicolor virginica
1      1          0         0
2      0          0         1
3      0          0         1
4      0          0         1
5      0          0         1

P.S. It's generally preferable to include all categories in training and test data. But that's none of my business.

2
21

Code

library(data.table)
library(mltools)
customers_1h <- one_hot(as.data.table(customers))

Result

> customers_1h
id gender_female gender_male mood_happy mood_sad outcome
1: 10             0           1          1        0       1
2: 20             1           0          0        1       1
3: 30             1           0          1        0       0
4: 40             0           1          0        1       0
5: 50             1           0          1        0       0

Data

customers <- data.frame(
  id=c(10, 20, 30, 40, 50),
  gender=c('male', 'female', 'female', 'male', 'female'),
  mood=c('happy', 'sad', 'happy', 'sad','happy'),
  outcome=c(1, 1, 0, 0, 0))
3

Hi here is my version of the same, this function encodes all categorical variables which are 'factors' , and removes one of the dummy variables to avoid dummy variable trap and returns a new Data frame with the encoding :-

onehotencoder <- function(df_orig) {
  df<-cbind(df_orig)
  df_clmtyp<-data.frame(clmtyp=sapply(df,class))
  df_col_typ<-data.frame(clmnm=colnames(df),clmtyp=df_clmtyp$clmtyp)
  for (rownm in 1:nrow(df_col_typ)) {
    if (df_col_typ[rownm,"clmtyp"]=="factor") {
      clmn_obj<-df[toString(df_col_typ[rownm,"clmnm"])] 
      dummy_matx<-data.frame(model.matrix( ~.-1, data = clmn_obj))
      dummy_matx<-dummy_matx[,c(1,3:ncol(dummy_matx))]
      df[toString(df_col_typ[rownm,"clmnm"])]<-NULL
      df<-cbind(df,dummy_matx)
      df[toString(df_col_typ[rownm,"clmnm"])]<-NULL
    }  }
  return(df)
}
1

In case you don't want to use any external package I have my own function:

one_hot_encoding = function(df, columns="season"){
  # create a copy of the original data.frame for not modifying the original
  df = cbind(df)
  # convert the columns to vector in case it is a string
  columns = c(columns)
  # for each variable perform the One hot encoding
  for (column in columns){
    unique_values = sort(unique(df[column])[,column])
    non_reference_values  = unique_values[c(-1)] # the first element is going 
                                                 # to be the reference by default
    for (value in non_reference_values){
      # the new dummy column name
      new_col_name = paste0(column,'.',value)
      # create new dummy column for each value of the non_reference_values
      df[new_col_name] <- with(df, ifelse(df[,column] == value, 1, 0))
    }
    # delete the one hot encoded column
    df[column] = NULL

  }
  return(df)
}

And you use it like this:

df = one_hot_encoding(df, c("season"))

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