Prep and split
You will be working with the full attrition dataset with 1470 instances of 30 features related to the target variable Attrition, including missing values. The mission is to build a full end-to-end model to predict your target. The dataset is loaded for you.
You'll start by preparing and splitting the data.
Questo esercizio fa parte del corso
Feature Engineering in R
Istruzioni dell'esercizio
- Begin by transforming all character values to factors.
- Create train and test splits.
Esercizio pratico interattivo
Prova a risolvere questo esercizio completando il codice di esempio.
# Transform all character values to factors
attrition <-
attrition %>%
mutate(___(where(___), as_factor))
# Create train and test splits
set.seed(123)
split <- initial_split(attrition, strata = Attrition)
test <- ___(split)
train <- ___(___)
glimpse(train)