Preparation for forecasting
Calibration sets the stage for accuracy and forecast confidence by computing predictions and residuals from out of sample data.
modeltime_calibrate(object, new_data, quiet = TRUE, ...)
object |
A fitted model object that is either:
|
new_data |
A test data set |
quiet |
Hide errors ( |
... |
Additional arguments passed to |
The results of calibration are used for:
Forecast Confidence Interval Estimation: The out of sample residual data is used to calculate the
confidence interval. Refer to modeltime_forecast()
.
Accuracy Calculations: The out of sample actual and prediction values are used to calculate
performance metrics. Refer to modeltime_accuracy()
The calibration steps include:
If not a Modeltime Table, objects are converted to Modeltime Tables internally
Two Columns are added:
.type
: Indicates the sample type. Only "Test" is currently available.
.calibration_data
: Contains a tibble with Timestamps, Actual Values, Predictions and Residuals
calculated from new_data
(Test Data)
A Modeltime Table (mdl_time_tbl
) with nested .calibration_data
added
library(tidyverse) library(lubridate) library(timetk) library(parsnip) library(rsample) # Data m750 <- m4_monthly %>% filter(id == "M750") # Split Data 80/20 splits <- initial_time_split(m750, prop = 0.9) # --- MODELS --- # Model 1: auto_arima ---- model_fit_arima <- arima_reg() %>% set_engine(engine = "auto_arima") %>% fit(value ~ date, data = training(splits)) # ---- MODELTIME TABLE ---- models_tbl <- modeltime_table( model_fit_arima ) # ---- CALIBRATE ---- calibration_tbl <- models_tbl %>% modeltime_calibrate(new_data = testing(splits)) # ---- ACCURACY ---- calibration_tbl %>% modeltime_accuracy() # ---- FORECAST ---- calibration_tbl %>% modeltime_forecast( new_data = testing(splits), actual_data = m750 )
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