auto.arima() function
We can use the auto.arima
function to help us automatically select a good starting model to build. Your regional sales data summed up for all products in the metropolitan region is loaded in your workspace as the MET_t
object. We are going to use the index
function to help with these dates.
Cet exercice fait partie du cours
Forecasting Product Demand in R
Instructions
- Split the data into both a training and validation piece with validation being all of your 2017 data. The training piece has been done for you, but you try the validation! Make sure to use the YYYY-MM-DD format for the date.
- Run the
auto.arima()
function on your metropolitan regional sales training data.
Exercice interactif pratique
Essayez cet exercice en complétant cet exemple de code.
# Split the data into training and validation
MET_t_train <- MET_t[index(MET_t) < "2017-01-01"]
MET_t_valid <- ___[index(___) >= "___"]
# Use auto.arima() function for metropolitan sales training data
auto.arima(___)