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XGBoost is well known to provide better solutions than other machine learning algorithms. In fact, since its inception, it has become the 'state-of-the-art” machine learning algorithm to deal with structured data. Note: you can always do sudo easy_install pip like some other page suggested, but it will result in having to do sudo pip install package_name every time Install GCC5 and then XGBoost # grab your. It is important to install it using Anaconda (in Anaconda’s directory), so that pip installs other libs there as well: conda install -y pip libgcc Now, a very important step: install xgboost Python Package dependencies beforehand.

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XGBoost Extension for Easy Ranking & TreeFeature.

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Xgboost

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0.7.1

0.7.0

0.6.1

Pip Install Xgboost

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