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So you want to compete in a kaggle competition with R and you want to use tidymodels. In this howto I show how you can use CatBoost with tidymodels. I give very terse descriptions of what the steps do, because I believe you read this post for implementation, not background on how the elements work. This tutorial is extremely similar to my previous post about using lightGBM with Tidymodels.
Why tidymodels? It is a unified machine learning framework that uses sane defaults, keeps model definitions andimplementation separate and allows you to easily swap models or change parts of the processing. In this howto I signify r packages by using the {packagename} convention, f.e.: {ggplot2} Tidymodels already works with XGBoost and many many other machine learning algorithms. However it doesn’t yet work with the successors of XGBoost: lightgbm and catboost. There is an experimental package called {treesnip} that lets you use catboost and catboost with tidymodels. This is a howto based on a very sound example of tidymodels with xgboost by Andy Merlino and Nick Merlino on tychobra.com from may 2020. In their example and in this one we use the AmesHousing dataset about house prices in Ames, Iowa, USA. The model will predict sale price. Andy and Nick give a great explanation for all the steps and what to think about. I highly recommend their tuturial and all tutorials created by Julia Silge. TL;DR: With treesnip you can just start using lightgbm and catboost in tidymodels without big changes to your workflow, it is awesome! It brings the state of the art models into the tidymodels framework. The template I’m using can also be found on this github project
Some basics before we go on: Normally I would do an extensive exploration of the data to see how the variables interact and influence the house price. In this example I want to focus on how you can use CatBoost with tidymodels, so I skip this part and use Andy and Nick’s feature engineering with a small change.
Basic steps for machine learning projects
The steps in most machine learning projects are as follows:
- Loading necessary packages and data
- split data into train and test ({rsample})
- light preprocessing ({recipes})
- find the best hyperparameters by
- creating crossvalidation folds ({rsample})
- creating a model specification ({tune, parsnip, treesnip, dials})
- creating a grid of values ({dials})
- using a workflow to contain the model and formula ({workflows})
- tune the model ({tune})
- find the best model from tuning
- retrain on entire test data
- evaluate on test data ({yardstick})
- check residuals and model diagnostics
Loading necessary packages and data
# data library(AmesHousing) # data cleaning library(janitor) # data prep library(dplyr) # visualisation library(ggplot2) # tidymodels library(rsample) library(recipes) library(parsnip) library(tune) library(dials) library(workflows) library(yardstick) library(treesnip)
Setting up some settings, this is optional but can help speed things up.
## # speed up computation with parallel processing library(doParallel) all_cores <- parallel::detectCores(logical = FALSE) registerDoParallel(cores = all_cores)
And setting up data:
# set the random seed so we can reproduce any simulated results. set.seed(1234) # load the housing data and clean names ames_data <- make_ames() %>% janitor::clean_names()
Split data into train and test
ames_split <- rsample::initial_split( ames_data, prop = 0.8, strata = sale_price )
Some light preprocessing
Many models require careful and extensive variable preprocessing to produce accurate predictions. Boosted tree models like XGBoost,lightgbm, and catboost are quite robust against highly skewed and/or correlated data, so the amount of preprocessing required is minimal. In contrast to XGBoost, both lightgbm and catboost are very capable of handling categorical variables (factors) and so you don’t need to turn variables into dummies (one hot encode), in fact you shouldn’t do it, it makes everything slower and might give you worse performance.
preprocessing_recipe <- recipes::recipe(sale_price ~ ., data = training(ames_split)) %>% # combine low frequency factor levels recipes::step_other(all_nominal(), threshold = 0.01) %>% # remove no variance predictors which provide no predictive information recipes::step_nzv(all_nominal()) %>% # prep the recipe so it can be used on other data prep()
Find the best hyperparameters
Create crossvalidation folds. This means the data is split into 5 chunks, the model trained on four of them and predicts on the fifth chunk. This is done five times (predicting every time on a different chunk) and the metrics will be averaged over the chunks as a measure of out of sample performance.
ames_cv_folds <- recipes::bake( preprocessing_recipe, new_data = training(ames_split) ) %>% rsample::vfold_cv(v = 5)
Create a model specification for CatBoost The treesnip package makes sure that boost_tree understands what engine CatBoost is, and how the parameters are translated internaly. We don’t know yet what the ideal parameter values are for this CatBoost model. So we have to tune the parameters.
catboost_model<- parsnip::boost_tree( mode = "regression", trees = 1000, min_n = tune(), learn_rate = tune(), tree_depth = tune() ) %>% set_engine("catboost", loss_function = "squarederror")
Grid specification by dials package to fill in the model above. This specification automates the min and max values of these parameters.
According to the Catboost parameter tuning guide
the hyperparameters number of trees
, learning rate
, tree depth
are the most important features.
Currently implemented for CatBoost in (treesnip) are:
- rsm (mtry)
- iterations (trees)
- min_data_in_leaf (min_n)
- depth (tree_depth)
- learning_rate (learn_rate)
- subsample (sample_size)
CatBoost_params <- dials::parameters( min_n(), # min data in leaf tree_depth(range = c(4,10)), # depth # In most cases, the optimal depth ranges from 4 to 10. # Values in the range from 6 to 10 are recommended. learn_rate() # learning rate )
And finally construct a grid with actual values to search for.
cbst_grid <- dials::grid_max_entropy( CatBoost_params, size = 20 # set this to a higher number to get better results # I don't want to run this all night, so I set it to 30 ) head(cbst_grid) # A tibble: 6 x 3 min_n tree_depth learn_rate <int> <int> <dbl> 1 4 9 5.32e- 3 2 16 7 5.23e-10 3 34 8 2.16e- 3 4 5 7 2.62e- 6 5 23 9 2.50e- 2 6 32 10 1.27e- 4
To tune our model, we perform grid search over our CatBoost_grid’s grid space to identify the hyperparameter values that have the lowest prediction error.
Actual workflow object
cbst_wf <- workflows::workflow() %>% add_model(catboost_model ) %>% add_formula(sale_price ~ .)
so far little to no computation has been performed except for preprocessing calculations But the machine will start to run hot in the next step, where we call tune_grid. If you look at the process for xgboost and in the next tutorial for catboost the steps remain the same, with a few details different but mostly the same!
We call tune_grid with:
- “object”: cbst_wf which is a workflow that we defined by the parsnip and workflows packages
- “resamples”: ames_cv_folds as defined by rsample and recipes packages
- “grid”: cbst_grid our grid space as defined by the dials package
- “metric”: the yardstick package defines the metric set used to evaluate model performance
cbst_tuned <- tune::tune_grid( object = cbst_wf, resamples = ames_cv_folds, grid = cbst_grid, metrics = yardstick::metric_set(rmse, rsq, mae), control = tune::control_grid(verbose = FALSE) # set this to TRUE to see # in what step of the process you are. But that doesn't look that well in # a blog. )
Find the best model from tuning results
hyperparameter values which performed best at minimizing RMSE.
cbst_tuned %>% tune::show_best(metric = "rmse",n = 5) # A tibble: 5 x 9 min_n tree_depth learn_rate .metric .estimator mean n std_err .config <int> <int> <dbl> <chr> <chr> <dbl> <int> <dbl> <chr> 1 5 4 0.0439 rmse standard 23698. 5 1487. Model14 2 23 9 0.0250 rmse standard 24605. 5 1401. Model05 3 4 9 0.00532 rmse standard 34664. 5 2015. Model01 4 22 5 0.00529 rmse standard 34742. 5 2115. Model20 5 16 7 0.00280 rmse standard 44768. 5 2241. Model17
plot the performance per parameter.
cbst_tuned %>% tune::show_best(metric = "rmse",n = 10) %>% tidyr::pivot_longer(min_n:learn_rate, names_to="variable",values_to="value" ) %>% ggplot(aes(value,mean)) + geom_line(alpha=1/2)+ geom_point()+ facet_wrap(~variable,scales = "free")+ ggtitle("Best parameters for RMSE")
cbst_tuned %>% tune::show_best(metric = "mae",n = 10) %>% tidyr::pivot_longer(min_n:learn_rate, names_to="variable",values_to="value" ) %>% ggplot(aes(value,mean)) + geom_line(alpha=1/2)+ geom_point()+ facet_wrap(~variable,scales = "free")+ ggtitle("Best parameters for MAE")
Than we can select the best parameter combination for a metric, or do it manually.
cbst_best_params <- cbst_tuned %>% tune::select_best("rmse")
Finalize the CatBoost model to use the best tuning parameters.
cbst_model_final <- catboost_model%>% finalize_model(cbst_best_params)
The finalized model is filled in:
# empty catboost_model Boosted Tree Model Specification (regression) Main Arguments: trees = 1000 min_n = tune() tree_depth = tune() learn_rate = tune() Engine-Specific Arguments: loss_function = squarederror Computational engine: catboost # filled in cbst_model_final Boosted Tree Model Specification (regression) Main Arguments: trees = 1000 min_n = 5 tree_depth = 4 learn_rate = 0.0438633239970453 Engine-Specific Arguments: loss_function = squarederror Computational engine: catboost
Retrain on entire training data
# create train set train_processed <- bake(preprocessing_recipe, new_data = training(ames_split)) # fit model on entire trainset trained_model_all_data <- cbst_model_final %>% # fit the model on all the training data fit( formula = sale_price ~ ., data = train_processed ) train_prediction <- trained_model_all_data %>% predict(new_data = train_processed) %>% bind_cols(training(ames_split))
And evaluate on test data (yardstick)
test_processed <- bake(preprocessing_recipe, new_data = testing(ames_split)) test_prediction <- trained_model_all_data %>% # use the training model fit to predict the test data predict(new_data = test_processed) %>% bind_cols(testing(ames_split))
measure the accuracy of our model on training set (overestimation)
train_prediction %>% yardstick::metrics(sale_price, .pred) %>% mutate(.estimate = format(round(.estimate, 2), big.mark = ",")) %>% knitr::kable()
.metric | .estimator | .estimate |
---|---|---|
rmse | standard | 18,911.94 |
rsq | standard | 0.94 |
mae | standard | 13,456.90 |
measure the accuracy of our model on data it hasn’t seen before (testset)
test_prediction %>% yardstick::metrics(sale_price, .pred) %>% mutate(.estimate = format(round(.estimate, 2), big.mark = ",")) %>% knitr::kable()
.metric | .estimator | .estimate |
---|---|---|
rmse | standard | 32,907.44 |
rsq | standard | 0.84 |
mae | standard | 17,696.41 |
Not a bad score.
look at residuals
house_prediction_residual <- test_prediction %>% arrange(.pred) %>% mutate(residual_pct = (sale_price - .pred) / .pred) %>% select(.pred, residual_pct) ggplot(house_prediction_residual, aes(x = .pred, y = residual_pct)) + geom_point() + xlab("Predicted Sale Price") + ylab("Residual (%)") + scale_x_continuous(labels = scales::dollar_format()) + scale_y_continuous(labels = scales::percent)
So that works quite well, there are some outliers in low price. And we can probably discover what cases are doing badly and maybe add more information to the model to discover and distinguish.
Other stuff
Installing CatBoost can be done following the official R installation instructions or see this post on my other blog for macos specific instructions
Find the original tutorial for tidymodels with xgboost here.
Reproducibility
< details> < summary> At the moment of creation (when I knitted this document ) this was the state of my machine: click to expandsessioninfo::session_info() ─ Session info ─────────────────────────────────────────────────────────────── setting value version R version 4.0.2 (2020-06-22) os macOS Catalina 10.15.6 system x86_64, darwin17.0 ui X11 language (EN) collate en_US.UTF-8 ctype en_US.UTF-8 tz Europe/Amsterdam date 2020-08-27 ─ Packages ─────────────────────────────────────────────────────────────────── package * version date lib source AmesHousing * 0.0.4 2020-06-23 [1] CRAN (R 4.0.2) assertthat 0.2.1 2019-03-21 [1] CRAN (R 4.0.0) catboost 0.24.1 2020-08-27 [1] url class 7.3-17 2020-04-26 [1] CRAN (R 4.0.2) cli 2.0.2 2020-02-28 [1] CRAN (R 4.0.0) codetools 0.2-16 2018-12-24 [1] CRAN (R 4.0.2) colorspace 1.4-1 2019-03-18 [1] CRAN (R 4.0.0) crayon 1.3.4 2017-09-16 [1] CRAN (R 4.0.0) dials * 0.0.8 2020-07-08 [1] CRAN (R 4.0.2) DiceDesign 1.8-1 2019-07-31 [1] CRAN (R 4.0.0) digest 0.6.25 2020-02-23 [1] CRAN (R 4.0.0) doParallel * 1.0.15 2019-08-02 [1] CRAN (R 4.0.2) dplyr * 1.0.2 2020-08-18 [1] CRAN (R 4.0.2) ellipsis 0.3.1 2020-05-15 [1] CRAN (R 4.0.1) evaluate 0.14 2019-05-28 [1] CRAN (R 4.0.0) fansi 0.4.1 2020-01-08 [1] CRAN (R 4.0.0) farver 2.0.3 2020-01-16 [1] CRAN (R 4.0.0) foreach * 1.5.0 2020-03-30 [1] CRAN (R 4.0.1) furrr 0.1.0 2018-05-16 [1] CRAN (R 4.0.0) future 1.18.0 2020-07-09 [1] CRAN (R 4.0.2) generics 0.0.2 2018-11-29 [1] CRAN (R 4.0.0) ggplot2 * 3.3.2 2020-06-19 [1] CRAN (R 4.0.1) globals 0.12.5 2019-12-07 [1] CRAN (R 4.0.0) glue 1.4.1 2020-05-13 [1] CRAN (R 4.0.1) gower 0.2.2 2020-06-23 [1] CRAN (R 4.0.1) GPfit 1.0-8 2019-02-08 [1] CRAN (R 4.0.0) gtable 0.3.0 2019-03-25 [1] CRAN (R 4.0.0) highr 0.8 2019-03-20 [1] CRAN (R 4.0.0) htmltools 0.5.0 2020-06-16 [1] CRAN (R 4.0.1) ipred 0.9-9 2019-04-28 [1] CRAN (R 4.0.0) iterators * 1.0.12 2019-07-26 [1] CRAN (R 4.0.0) janitor * 2.0.1 2020-04-12 [1] CRAN (R 4.0.2) jsonlite 1.7.0 2020-06-25 [1] CRAN (R 4.0.1) knitr 1.29 2020-06-23 [1] CRAN (R 4.0.1) labeling 0.3 2014-08-23 [1] CRAN (R 4.0.0) lattice 0.20-41 2020-04-02 [1] CRAN (R 4.0.2) lava 1.6.7 2020-03-05 [1] CRAN (R 4.0.0) lhs 1.0.2 2020-04-13 [1] CRAN (R 4.0.2) lifecycle 0.2.0 2020-03-06 [1] CRAN (R 4.0.0) listenv 0.8.0 2019-12-05 [1] CRAN (R 4.0.0) lubridate 1.7.9 2020-06-08 [1] CRAN (R 4.0.2) magrittr 1.5 2014-11-22 [1] CRAN (R 4.0.0) MASS 7.3-51.6 2020-04-26 [1] CRAN (R 4.0.2) Matrix 1.2-18 2019-11-27 [1] CRAN (R 4.0.2) munsell 0.5.0 2018-06-12 [1] CRAN (R 4.0.0) nnet 7.3-14 2020-04-26 [1] CRAN (R 4.0.2) parsnip * 0.1.3 2020-08-04 [1] CRAN (R 4.0.2) pillar 1.4.6 2020-07-10 [1] CRAN (R 4.0.2) pkgconfig 2.0.3 2019-09-22 [1] CRAN (R 4.0.0) plyr 1.8.6 2020-03-03 [1] CRAN (R 4.0.0) pROC 1.16.2 2020-03-19 [1] CRAN (R 4.0.0) prodlim 2019.11.13 2019-11-17 [1] CRAN (R 4.0.0) purrr 0.3.4 2020-04-17 [1] CRAN (R 4.0.1) R6 2.4.1 2019-11-12 [1] CRAN (R 4.0.0) Rcpp 1.0.5 2020-07-06 [1] CRAN (R 4.0.2) recipes * 0.1.13 2020-06-23 [1] CRAN (R 4.0.1) rlang 0.4.7 2020-07-09 [1] CRAN (R 4.0.2) rmarkdown 2.3 2020-06-18 [1] CRAN (R 4.0.1) rpart 4.1-15 2019-04-12 [1] CRAN (R 4.0.2) rsample * 0.0.7 2020-06-04 [1] CRAN (R 4.0.1) scales * 1.1.1 2020-05-11 [1] CRAN (R 4.0.1) sessioninfo 1.1.1 2018-11-05 [1] CRAN (R 4.0.1) snakecase 0.11.0 2019-05-25 [1] CRAN (R 4.0.2) stringi 1.4.6 2020-02-17 [1] CRAN (R 4.0.0) stringr 1.4.0 2019-02-10 [1] CRAN (R 4.0.0) survival 3.2-3 2020-06-13 [1] CRAN (R 4.0.1) tibble 3.0.3 2020-07-10 [1] CRAN (R 4.0.2) tidyr 1.1.1 2020-07-31 [1] CRAN (R 4.0.2) tidyselect 1.1.0 2020-05-11 [1] CRAN (R 4.0.1) timeDate 3043.102 2018-02-21 [1] CRAN (R 4.0.0) treesnip * 0.1.0 2020-08-26 [1] Github (curso-r/treesnip@8a87e8c) tune * 0.1.1 2020-07-08 [1] CRAN (R 4.0.2) utf8 1.1.4 2018-05-24 [1] CRAN (R 4.0.0) vctrs 0.3.2 2020-07-15 [1] CRAN (R 4.0.2) withr 2.2.0 2020-04-20 [1] CRAN (R 4.0.2) workflows * 0.1.2 2020-07-07 [1] CRAN (R 4.0.2) xfun 0.15 2020-06-21 [1] CRAN (R 4.0.2) yaml 2.2.1 2020-02-01 [1] CRAN (R 4.0.0) yardstick * 0.0.7 2020-07-13 [1] CRAN (R 4.0.2) [1] /Library/Frameworks/R.framework/Versions/4.0/Resources/library
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