mljar/supertree
Impress your boss with interactive Decision Tree visualization
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Latest capture 2026-07-07 03:14
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Scanned 2026-07-07 03:14
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Impress your boss with interactive Decision Tree visualization
ID3-based implementation of the ML Decision Tree algorithm
Python implementation of the rulefit algorithm
Highly interpretable classifiers for scikit learn, producing easily understood decision rules instead of black box models
A collection of state-of-the-art algorithms for the training, serving and interpretation of Decision Forest models in Keras.
Run predictions inside the database