The goal of baguette is to provide efficient functions for bagging (aka bootstrap aggregating) ensemble models.
The model objects produced by baguette are kept smaller than they would otherwise be through two operations:
The butcher package is used to remove object elements that are not crucial to using the models. For example, some models contain copies of the training set or model residuals when created. These are removed to save space.
For ensembles whose base models use a formula method, there is a built-in redundancy because each model has an identical terms object. However, each one of these takes up separate space in memory and can be quite large when there are many predictors. The baguette package solves this problem by replacing each terms object with the object from the first model in the ensemble. Since the other terms objects are not modified, we get the same functional capabilities using far less memory to save the ensemble.
You can install the released version of baguette from CRAN with:
Install the development version from GitHub with:
Let’s build a bagged decision tree model to predict a continuous outcome.
library(baguette) #> Loading required package: parsnip bag_tree() %>% set_engine("rpart") # C5.0 is also available here #> Bagged Decision Tree Model Specification (unknown) #> #> Main Arguments: #> cost_complexity = 0 #> min_n = 2 #> #> Computational engine: rpart set.seed(123) bag_cars <- bag_tree() %>% set_engine("rpart", times = 25) %>% # 25 ensemble members set_mode("regression") %>% fit(mpg ~ ., data = mtcars) bag_cars #> parsnip model object #> #> Fit time: 4s #> Bagged CART (regression with 25 members) #> #> Variable importance scores include: #> #> # A tibble: 10 x 4 #> term value std.error used #> <chr> <dbl> <dbl> <int> #> 1 disp 905. 51.9 25 #> 2 wt 889. 56.8 25 #> 3 hp 814. 48.7 25 #> 4 cyl 581. 42.9 25 #> 5 drat 540. 54.1 25 #> 6 qsec 281. 53.2 25 #> 7 vs 150. 51.2 20 #> 8 carb 84.4 30.6 25 #> 9 gear 80.0 35.8 23 #> 10 am 51.5 22.9 18
The models also return aggregated variable importance scores.
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