1.1 KiB
1.1 KiB
xgboost: eXtreme Gradient Boosting
A General purpose gradient boosting (tree) library.
Creater: Tianqi Chen
Turorial and Documentation: https://github.com/tqchen/xgboost/wiki
Features
- Sparse feature format:
- Sparse feature format allows easy handling of missing values, and improve computation efficiency.
- Push the limit on single machine:
- Efficient implementation that optimizes memory and computation.
- Layout of gradient boosting algorithm to support generic tasks, see project wiki.
Supported key components
- Gradient boosting models:
- regression tree (GBRT)
- linear model/lasso
- Objectives to support tasks:
- regression
- classification
- OpenMP implementation
Planned components
- More objective to support tasks:
- ranking
- matrix factorization
- structured prediction
File extension convention
(1) .h are interface, utils and data structures, with detailed comment; (2) .cpp are implementations that will be compiled, with less comment; (3) .hpp are implementations that will be included by .cpp, with less comment