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XGBoost Documentation
This is document of xgboost library. XGBoost is short for eXtreme gradient boosting. This is a library that is designed, and optimized for boosted (tree) algorithms. The goal of this library is to push the extreme of the computation limits of machines to provide a scalable, portable and accurate for large scale tree boosting.
This document is hosted at http://xgboost.readthedocs.org/. You can also browse most of the documents in github directly.
User Guide
- Installation Guide
- Introduction to Boosted Trees
- Python Package Document
- R Package Document
- XGBoost.jl Julia Package
- Distributed Training
- Frequently Asked Questions
- External Memory Version
- Learning to use XGBoost by Example
- Parameters
- Text input format
- Notes on Parameter Tunning
Developer Guide
Tutorials
Tutorials are self contained materials that teaches you how to achieve a complete data science task with xgboost, these are great resources to learn xgboost by real examples. If you think you have something that belongs to here, send a pull request.
- Binary classification using XGBoost Command Line (CLI)
- This tutorial introduces the basic usage of CLI version of xgboost
- Introduction of XGBoost in Python (python)
- This tutorial introduces the python package of xgboost
- Introduction to XGBoost in R (R package)
- This is a general presentation about xgboost in R.
- Discover your data with XGBoost in R (R package)
- This tutorial explaining feature analysis in xgboost.
- Understanding XGBoost Model on Otto Dataset (R package)
- This tutorial teaches you how to use xgboost to compete kaggle otto challenge.
Highlight Solutions
This section is about blogposts, presentation and videos discussing how to use xgboost to solve your interesting problem. If you think something belongs to here, send a pull request.
- Kaggle CrowdFlower winner's solution by Chenglong Chen
- Kaggle Malware Prediction winner's solution
- Kaggle Tradeshift winning solution by daxiongshu
- Feature Importance Analysis with XGBoost in Tax audit
- Video tutorial: Better Optimization with Repeated Cross Validation and the XGBoost model
- Winning solution of Kaggle Higgs competition: what a single model can do
Indices and tables
* :ref:`genindex`
* :ref:`modindex`
* :ref:`search`