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hgboost - Hyperoptimized Gradient Boosting

Python PyPI Version License Github Forks GitHub Open Issues Project Status Downloads Downloads DOI Sphinx Open In Colab Medium


hgboost is short for Hyperoptimized Gradient Boosting and is a python package for hyperparameter optimization for xgboost, catboost and lightboost using cross-validation, and evaluating the results on an independent validation set. hgboost can be applied for classification and regression tasks.

hgboost is fun because:

* 1. Hyperoptimization of the Parameter-space using bayesian approach.
* 2. Determines the best scoring model(s) using k-fold cross validation.
* 3. Evaluates best model on independent evaluation set.
* 4. Fit model on entire input-data using the best model.
* 5. Works for classification and regression
* 6. Creating a super-hyperoptimized model by an ensemble of all individual optimized models.
* 7. Return model, space and test/evaluation results.
* 8. Makes insightful plots.

⭐️ Star this repo if you like it ⭐️


Blogs

Medium Blog 1: The Best Boosting Model using Bayesian Hyperparameter Tuning but without Overfitting.

Medium Blog 2: Create Explainable Gradient Boosting Classification models using Bayesian Hyperparameter Optimization.


On the documentation pages you can find detailed information about the working of the hgboost with many examples.


Colab Notebooks

  • Open regression example In Colab Regression example

  • Open classification example In Colab Classification example


Schematic overview of hgboost

Installation Environment

conda create -n env_hgboost python=3.8
conda activate env_hgboost

Install from pypi

pip install hgboost
pip install -U hgboost # Force update

Import hgboost package

import hgboost as hgboost

Examples

Classification example for xgboost, catboost and lightboost:

# Load library
from hgboost import hgboost

# Initialization
hgb = hgboost(max_eval=10, threshold=0.5, cv=5, test_size=0.2, val_size=0.2, top_cv_evals=10, random_state=42)

# Fit xgboost by hyperoptimization and cross-validation
results = hgb.xgboost(X, y, pos_label='survived')

# [hgboost] >Start hgboost classification..
# [hgboost] >Collecting xgb_clf parameters.
# [hgboost] >Number of variables in search space is [11], loss function: [auc].
# [hgboost] >method: xgb_clf
# [hgboost] >eval_metric: auc
# [hgboost] >greater_is_better: True
# [hgboost] >pos_label: True
# [hgboost] >Total dataset: (891, 204) 
# [hgboost] >Hyperparameter optimization..
#  100% |----| 500/500 [04:39<05:21,  1.33s/trial, best loss: -0.8800619834710744]
# [hgboost] >Best performing [xgb_clf] model: auc=0.881198
# [hgboost] >5-fold cross validation for the top 10 scoring models, Total nr. tests: 50
# 100%|██████████| 10/10 [00:42<00:00,  4.27s/it]
# [hgboost] >Evalute best [xgb_clf] model on independent validation dataset (179 samples, 20.00%).
# [hgboost] >[auc] on independent validation dataset: -0.832
# [hgboost] >Retrain [xgb_clf] on the entire dataset with the optimal parameters settings.
# Plot the ensemble classification validation results
hgb.plot_validation()


References

* http://hyperopt.github.io/hyperopt/
* https://github.com/dmlc/xgboost
* https://github.com/microsoft/LightGBM
* https://github.com/catboost/catboost

Maintainers

Contribute

  • Contributions are welcome.

Licence See LICENSE for details.

Coffee

  • If you wish to buy me a Coffee for this work, it is very appreciated :)