Ensemble Algorithms for Time Series Forecasting with Modeltime
A modeltime
extension that implements ensemble forecasting
methods including model averaging, weighted averaging, and stacking.
Install the CRAN version:
install.packages("modeltime.ensemble")
Or, install the development version:
remotes::install_github("business-science/modeltime.ensemble")
- Getting Started with Modeltime: Learn the basics of forecasting with Modeltime.
- Getting Started with Modeltime Ensemble: Learn the basics of forecasting with Modeltime ensemble models.
Load the following libraries.
library(tidymodels)
library(modeltime)
library(modeltime.ensemble)
library(dplyr)
library(timetk)
Create a Modeltime Table using the modeltime
package.
m750_models
#> # Modeltime Table
#> # A tibble: 3 × 3
#> .model_id .model .model_desc
#> <int> <list> <chr>
#> 1 1 <workflow> ARIMA(0,1,1)(0,1,1)[12]
#> 2 2 <workflow> PROPHET
#> 3 3 <workflow> GLMNET
Then turn that Modeltime Table into a Modeltime Ensemble.
ensemble_fit <- m750_models %>%
ensemble_average(type = "mean")
ensemble_fit
#> ── Modeltime Ensemble ───────────────────────────────────────────
#> Ensemble of 3 Models (MEAN)
#>
#> # Modeltime Table
#> # A tibble: 3 × 3
#> .model_id .model .model_desc
#> <int> <list> <chr>
#> 1 1 <workflow> ARIMA(0,1,1)(0,1,1)[12]
#> 2 2 <workflow> PROPHET
#> 3 3 <workflow> GLMNET
To forecast, just follow the Modeltime Workflow.
# Calibration
calibration_tbl <- modeltime_table(
ensemble_fit
) %>%
modeltime_calibrate(testing(m750_splits), quiet = FALSE)
# Forecast vs Test Set
calibration_tbl %>%
modeltime_forecast(
new_data = testing(m750_splits),
actual_data = m750
) %>%
plot_modeltime_forecast(.interactive = FALSE)
Learn a growing ecosystem of forecasting packages
Modeltime is part of a growing ecosystem of Modeltime forecasting packages.
Become the forecasting expert for your organization
High-Performance Time Series Course
Time series is changing. Businesses now need 10,000+ time series forecasts every day. This is what I call a High-Performance Time Series Forecasting System (HPTSF) - Accurate, Robust, and Scalable Forecasting.
High-Performance Forecasting Systems will save companies by improving accuracy and scalability. Imagine what will happen to your career if you can provide your organization a “High-Performance Time Series Forecasting System” (HPTSF System).
I teach how to build a HPTFS System in my High-Performance Time Series Forecasting Course. You will learn:
- Time Series Machine Learning (cutting-edge) with
Modeltime
- 30+ Models (Prophet, ARIMA, XGBoost, Random Forest, & many more) - Deep Learning with
GluonTS
(Competition Winners) - Time Series Preprocessing, Noise Reduction, & Anomaly Detection
- Feature engineering using lagged variables & external regressors
- Hyperparameter Tuning
- Time series cross-validation
- Ensembling Multiple Machine Learning & Univariate Modeling Techniques (Competition Winner)
- Scalable Forecasting - Forecast 1000+ time series in parallel
- and more.
Become the Time Series Expert for your organization.