Ant-xgboost

Latest version: v0.91

Safety actively analyzes 628012 Python packages for vulnerabilities to keep your Python projects secure.

Scan your dependencies

Page 2 of 3

0.72

* Starting with this release, we plan to make a new release every two months. See 3252 for more details.
* Fix a pathological behavior (near-zero second-order gradients) in multiclass objective (3304)
* Tree dumps now use high precision in storing floating-point values (3298)
* Submodules `rabit` and `dmlc-core` have been brought up to date, bringing bug fixes (3330, 3221).
* GPU support
- Continuous integration tests for GPU code (3294, 3309)
- GPU accelerated coordinate descent algorithm (3178)
- Abstract 1D vector class now works with multiple GPUs (3287)
- Generate PTX code for most recent architecture (3316)
- Fix a memory bug on NVIDIA K80 cards (3293)
- Address performance instability for single-GPU, multi-core machines (3324)
* Python package
- FreeBSD support (3247)
- Validation of feature names in `Booster.predict()` is now optional (3323)
* Updated Sklearn API
- Validation sets now support instance weights (2354)
- `XGBClassifier.predict_proba()` should not support `output_margin` option. (3343) See BREAKING CHANGES below.
* R package:
- Better handling of NULL in `print.xgb.Booster()` (3338)
- Comply with CRAN policy by removing compiler warning suppression (3329)
- Updated CRAN submission
* JVM packages
- JVM packages will now use the same versioning scheme as other packages (3253)
- Update Spark to 2.3 (3254)
- Add scripts to cross-build and deploy artifacts (3276, 3307)
- Fix a compilation error for Scala 2.10 (3332)
* BREAKING CHANGES
- `XGBClassifier.predict_proba()` no longer accepts paramter `output_margin`. The paramater makes no sense for `predict_proba()` because the method is to predict class probabilities, not raw margin scores.

0.71

* This is a minor release, mainly motivated by issues concerning `pip install`, e.g. 2426, 3189, 3118, and 3194.
With this release, users of Linux and MacOS will be able to run `pip install` for the most part.
* Refactored linear booster class (`gblinear`), so as to support multiple coordinate descent updaters (3103, 3134). See BREAKING CHANGES below.
* Fix slow training for multiclass classification with high number of classes (3109)
* Fix a corner case in approximate quantile sketch (3167). Applicable for 'hist' and 'gpu_hist' algorithms
* Fix memory leak in DMatrix (3182)
* New functionality
- Better linear booster class (3103, 3134)
- Pairwise SHAP interaction effects (3043)
- Cox loss (3043)
- AUC-PR metric for ranking task (3172)
- Monotonic constraints for 'hist' algorithm (3085)
* GPU support
- Create an abtract 1D vector class that moves data seamlessly between the main and GPU memory (2935, 3116, 3068). This eliminates unnecessary PCIe data transfer during training time.
- Fix minor bugs (3051, 3217)
- Fix compatibility error for CUDA 9.1 (3218)
* Python package:
- Correctly handle parameter `verbose_eval=0` (3115)
* R package:
- Eliminate segmentation fault on 32-bit Windows platform (2994)
* JVM packages
- Fix a memory bug involving double-freeing Booster objects (3005, 3011)
- Handle empty partition in predict (3014)
- Update docs and unify terminology (3024)
- Delete cache files after job finishes (3022)
- Compatibility fixes for latest Spark versions (3062, 3093)
* BREAKING CHANGES: Updated linear modelling algorithms. In particular L1/L2 regularisation penalties are now normalised to number of training examples. This makes the implementation consistent with sklearn/glmnet. L2 regularisation has also been removed from the intercept. To produce linear models with the old regularisation behaviour, the alpha/lambda regularisation parameters can be manually scaled by dividing them by the number of training examples.

0.47

* Changes in R library
- fixed possible problem of poisson regression.
- switched from 0 to NA for missing values.
- exposed access to additional model parameters.
* Changes in Python library
- throws exception instead of crash terminal when a parameter error happens.
- has importance plot and tree plot functions.
- accepts different learning rates for each boosting round.
- allows model training continuation from previously saved model.
- allows early stopping in CV.
- allows feval to return a list of tuples.
- allows eval_metric to handle additional format.
- improved compatibility in sklearn module.
- additional parameters added for sklearn wrapper.
- added pip installation functionality.
- supports more Pandas DataFrame dtypes.
- added best_ntree_limit attribute, in addition to best_score and best_iteration.
* Java api is ready for use
* Added more test cases and continuous integration to make each build more robust.

0.7

* **This version represents a major change from the last release (v0.6), which was released one year and half ago.**
* Updated Sklearn API
- Add compatibility layer for scikit-learn v0.18: `sklearn.cross_validation` now deprecated
- Updated to allow use of all XGBoost parameters via `**kwargs`.
- Updated `nthread` to `n_jobs` and `seed` to `random_state` (as per Sklearn convention); `nthread` and `seed` are now marked as deprecated
- Updated to allow choice of Booster (`gbtree`, `gblinear`, or `dart`)
- `XGBRegressor` now supports instance weights (specify `sample_weight` parameter)
- Pass `n_jobs` parameter to the `DMatrix` constructor
- Add `xgb_model` parameter to `fit` method, to allow continuation of training
* Refactored gbm to allow more friendly cache strategy
- Specialized some prediction routine
* Robust `DMatrix` construction from a sparse matrix
* Faster consturction of `DMatrix` from 2D NumPy matrices: elide copies, use of multiple threads
* Automatically remove nan from input data when it is sparse.
- This can solve some of user reported problem of istart != hist.size
* Fix the single-instance prediction function to obtain correct predictions
* Minor fixes
- Thread local variable is upgraded so it is automatically freed at thread exit.
- Fix saving and loading `count::poisson` models
- Fix CalcDCG to use base-2 logarithm
- Messages are now written to stderr instead of stdout
- Keep built-in evaluations while using customized evaluation functions
- Use `bst_float` consistently to minimize type conversion
- Copy the base margin when slicing `DMatrix`
- Evaluation metrics are now saved to the model file
- Use `int32_t` explicitly when serializing version
- In distributed training, synchronize the number of features after loading a data matrix.
* Migrate to C++11
- The current master version now requires C++11 enabled compiled(g++4.8 or higher)
* Predictor interface was factored out (in a manner similar to the updater interface).
* Makefile support for Solaris and ARM
* Test code coverage using Codecov
* Add CPP tests
* Add `Dockerfile` and `Jenkinsfile` to support continuous integration for GPU code
* New functionality
- Ability to adjust tree model's statistics to a new dataset without changing tree structures.
- Ability to extract feature contributions from individual predictions, as described in [here](http://blog.datadive.net/interpreting-random-forests/) and [here](https://arxiv.org/abs/1706.06060).
- Faster, histogram-based tree algorithm (`tree_method='hist'`) .
- GPU/CUDA accelerated tree algorithms (`tree_method='gpu_hist'` or `'gpu_exact'`), including the GPU-based predictor.
- Monotonic constraints: when other features are fixed, force the prediction to be monotonic increasing with respect to a certain specified feature.
- Faster gradient caculation using AVX SIMD
- Ability to export models in JSON format
- Support for Tweedie regression
- Additional dropout options for DART: binomial+1, epsilon
- Ability to update an existing model in-place: this is useful for many applications, such as determining feature importance
* Python package:
- New parameters:
- `learning_rates` in `cv()`
- `shuffle` in `mknfold()`
- `max_features` and `show_values` in `plot_importance()`
- `sample_weight` in `XGBRegressor.fit()`
- Support binary wheel builds
- Fix `MultiIndex` detection to support Pandas 0.21.0 and higher
- Support metrics and evaluation sets whose names contain `-`
- Support feature maps when plotting trees
- Compatibility fix for Python 2.6
- Call `print_evaluation` callback at last iteration
- Use appropriate integer types when calling native code, to prevent truncation and memory error
- Fix shared library loading on Mac OS X
* R package:
- New parameters:
- `silent` in `xgb.DMatrix()`
- `use_int_id` in `xgb.model.dt.tree()`
- `predcontrib` in `predict()`
- `monotone_constraints` in `xgb.train()`
- Default value of the `save_period` parameter in `xgboost()` changed to NULL (consistent with `xgb.train()`).
- It's possible to custom-build the R package with GPU acceleration support.
- Enable JVM build for Mac OS X and Windows
- Integration with AppVeyor CI
- Improved safety for garbage collection
- Store numeric attributes with higher precision
- Easier installation for devel version
- Improved `xgb.plot.tree()`
- Various minor fixes to improve user experience and robustness
- Register native code to pass CRAN check
- Updated CRAN submission
* JVM packages
- Add Spark pipeline persistence API
- Fix data persistence: loss evaluation on test data had wrongly used caches for training data.
- Clean external cache after training
- Implement early stopping
- Enable training of multiple models by distinguishing stage IDs
- Better Spark integration: support RDD / dataframe / dataset, integrate with Spark ML package
- XGBoost4j now supports ranking task
- Support training with missing data
- Refactor JVM package to separate regression and classification models to be consistent with other machine learning libraries
- Support XGBoost4j compilation on Windows
- Parameter tuning tool
- Publish source code for XGBoost4j to maven local repo
- Scala implementation of the Rabit tracker (drop-in replacement for the Java implementation)
- Better exception handling for the Rabit tracker
- Persist `num_class`, number of classes (for classification task)
- `XGBoostModel` now holds `BoosterParams`
- libxgboost4j is now part of CMake build
- Release `DMatrix` when no longer needed, to conserve memory
- Expose `baseMargin`, to allow initialization of boosting with predictions from an external model
- Support instance weights
- Use `SparkParallelismTracker` to prevent jobs from hanging forever
- Expose train-time evaluation metrics via `XGBoostModel.summary`
- Option to specify `host-ip` explicitly in the Rabit tracker
* Documentation
- Better math notation for gradient boosting
- Updated build instructions for Mac OS X
- Template for GitHub issues
- Add `CITATION` file for citing XGBoost in scientific writing
- Fix dropdown menu in xgboost.readthedocs.io
- Document `updater_seq` parameter
- Style fixes for Python documentation
- Links to additional examples and tutorials
- Clarify installation requirements
* Changes that break backward compatibility
- [1519](https://github.com/dmlc/xgboost/pull/1519) XGBoost-spark no longer contains APIs for DMatrix; use the public booster interface instead.
- [2476](https://github.com/dmlc/xgboost/pull/2476) `XGBoostModel.predict()` now has a different signature

0.6

* Version 0.5 is skipped due to major improvements in the core
* Major refactor of core library.
- Goal: more flexible and modular code as a portable library.
- Switch to use of c++11 standard code.
- Random number generator defaults to std::mt19937.
- Share the data loading pipeline and logging module from dmlc-core.
- Enable registry pattern to allow optionally plugin of objective, metric, tree constructor, data loader.
- Future plugin modules can be put into xgboost/plugin and register back to the library.
- Remove most of the raw pointers to smart ptrs, for RAII safety.
* Add official option to approximate algorithm `tree_method` to parameter.
- Change default behavior to switch to prefer faster algorithm.
- User will get a message when approximate algorithm is chosen.
* Change library name to libxgboost.so
* Backward compatiblity
- The binary buffer file is not backward compatible with previous version.
- The model file is backward compatible on 64 bit platforms.
* The model file is compatible between 64/32 bit platforms(not yet tested).
* External memory version and other advanced features will be exposed to R library as well on linux.
- Previously some of the features are blocked due to C++11 and threading limits.
- The windows version is still blocked due to Rtools do not support std::thread.
* rabit and dmlc-core are maintained through git submodule
- Anyone can open PR to update these dependencies now.
* Improvements
- Rabit and xgboost libs are not thread-safe and use thread local PRNGs
- This could fix some of the previous problem which runs xgboost on multiple threads.
* JVM Package
- Enable xgboost4j for java and scala
- XGBoost distributed now runs on Flink and Spark.
* Support model attributes listing for meta data.
- https://github.com/dmlc/xgboost/pull/1198
- https://github.com/dmlc/xgboost/pull/1166
* Support callback API
- https://github.com/dmlc/xgboost/issues/892
- https://github.com/dmlc/xgboost/pull/1211
- https://github.com/dmlc/xgboost/pull/1264
* Support new booster DART(dropout in tree boosting)
- https://github.com/dmlc/xgboost/pull/1220
* Add CMake build system
- https://github.com/dmlc/xgboost/pull/1314

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

Page 2 of 3

© 2024 Safety CLI Cybersecurity Inc. All Rights Reserved.