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A suite of visual analysis and diagnostic tools for machine learning.

Project description

Yellowbrick is a suite of visual analysis and diagnostic tools designed to facilitate machine learning with Scikit-Learn. The package includes visualizations that can help users navigate the feature selection process, build intuition around model selection, diagnose common problems like bias, heteroscedasticity, underfit, and overtraining, and support hyperparameter tuning to steer predictive models toward more successful results.

Some of the available tools include:

  • histograms
  • scatter plot matrices
  • parallel coordinates
  • jointplots
  • ROC curves
  • classification heatmaps
  • residual plots
  • validation curves
  • gridsearch heatmaps

For more, please see the full documentation at: http://yellowbrick.readthedocs.org/en/latest/

Project details


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0.3.3

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Filename, size & hash SHA256 hash help File type Python version Upload date
yellowbrick-0.3.3-py2.py3-none-any.whl (65.5 kB) Copy SHA256 hash SHA256 Wheel py2.py3 Feb 22, 2017
yellowbrick-0.3.3.tar.gz (10.5 MB) Copy SHA256 hash SHA256 Source None Feb 22, 2017

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