Change Log ===== xgboost-0.1 ===== * Initial release xgboost-0.2x ===== * Python module * Weighted samples instances * Initial version of pairwise rank xgboost-0.3 ===== * Faster tree construction module - Allows subsample columns during tree construction via ```bst:col_samplebytree=ratio``` * Support for boosting from initial predictions * Experimental version of LambdaRank * Linear booster is now parallelized, using parallel coordinated descent. * Add [Code Guide](src/README.md) for customizing objective function and evaluation * Add R module xgboost-0.4 ===== * Distributed version of xgboost that runs on YARN, scales to billions of examples * Direct save/load data and model from/to S3 and HDFS * Feature importance visualization in R module, by Michael Benesty * Predict leaf index * Poisson regression for counts data * Early stopping option in training * Native save load support in R and python - xgboost models now can be saved using save/load in R - xgboost python model is now pickable * sklearn wrapper is supported in python module * Experimental External memory version on going version ===== * Python module now throw exception instead of crash terminal when a parameter error happens. * Java api is ready for use * Added more test cases and continuous integration to make each build more robust * Improvements in sklearn compatible module