some more changes to remove redundant information
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README.md
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README.md
@ -28,17 +28,17 @@ What's New
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----------
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* XGBoost helps Chenglong Chen to win [Kaggle CrowdFlower Competition](https://www.kaggle.com/c/crowdflower-search-relevance)
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- Check out the winning solution at [Highlight links](doc/README.md#highlight-links)
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Check out the [winning solution](doc/README.md#highlight-links)
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* XGBoost-0.4 release, see [CHANGES.md](CHANGES.md#xgboost-04)
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* XGBoost helps three champion teams to win [WWW2015 Microsoft Malware Classification Challenge (BIG 2015)](http://www.kaggle.com/c/malware-classification/forums/t/13490/say-no-to-overfitting-approaches-sharing)
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- Check out the winning solution at [Highlight links](doc/README.md#highlight-links)
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Check out the [winning solution](doc/README.md#highlight-links)
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* [External Memory Version](doc/external_memory.md)
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Version
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-------
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* Current version xgboost-0.4, a lot improvment has been made since 0.3
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- Change log in [CHANGES.md](CHANGES.md)
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* Current version xgboost-0.4
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- [Change log](CHANGES.md)
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- This version is compatible with 0.3x versions
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Features
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@ -48,8 +48,7 @@ Features
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* Fast and memory efficient
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- Can be more than 10 times faster than GBM in sklearn and R. [benchm-ml numbers](https://github.com/szilard/benchm-ml)
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- Handles sparse matrices, support external memory
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* Accurate prediction, and used extensively by data scientists and kagglers
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- See [highlight links](https://github.com/dmlc/xgboost/blob/master/doc/README.md#highlight-links)
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* Accurate prediction, and used extensively by data scientists and kagglers - [highlight links](https://github.com/dmlc/xgboost/blob/master/doc/README.md#highlight-links)
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* Distributed and Portable
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- The distributed version runs on Hadoop (YARN), MPI, SGE etc.
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- Scales to billions of examples and beyond
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@ -75,5 +74,5 @@ License
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XGBoost in Graphlab Create
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--------------------------
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* XGBoost is adopted as part of boosted tree toolkit in Graphlab Create (GLC). Graphlab Create is a powerful python toolkit that allows you to do data manipulation, graph processing, hyper-parameter search, and visualization of TeraBytes scale data in one framework. Try the Graphlab Create in http://graphlab.com/products/create/quick-start-guide.html
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* XGBoost is adopted as part of boosted tree toolkit in Graphlab Create (GLC). Graphlab Create is a powerful python toolkit that allows you to do data manipulation, graph processing, hyper-parameter search, and visualization of TeraBytes scale data in one framework. Try the [Graphlab Create](http://graphlab.com/products/create/quick-start-guide.html)
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* Nice blogpost by Jay Gu about using GLC boosted tree to solve kaggle bike sharing challenge: http://blog.graphlab.com/using-gradient-boosted-trees-to-predict-bike-sharing-demand
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