Visualize decision tree in Python
Project description
SuperTree - Interactive Decision Tree Visualization
Interactive Decision Tree Visualization is a Python package designed to visualize decision trees in an interactive and user-friendly way within Jupyter Notebooks, Jupyter Lab, Google Colab, and any other notebooks that support HTML rendering.
Description
This package allows users to seamlessly integrate decision tree visualizations into their data analysis workflows. With this tool, you can not only display decision trees, but also interact with them directly within your notebook environment.
Key features
Whether you're presenting your analysis to others or exploring complex models yourself, this package enhances the way you work with decision trees by making them more accessible and easier to understand. Key features include:
- ability to zoom and pan through large trees,
- collapse and expand selected nodes,
- explore the structure of the tree in an intuitive and visually appealing manner.
Instalation
You can install SuperTree package using pip:
pip install supertree
Conda support coming soon.
Supported Libraries
- scikit-learn (
sklearn
) - LightGBM
- XGBoost
Supported Algorithms
The package is compatible with a wide range of classifiers and regressors from these libraries, specifically:
Scikit-learn
DecisionTreeClassifier
ExtraTreeClassifier
ExtraTreesClassifier
RandomForestClassifier
GradientBoostingClassifier
DecisionTreeRegressor
ExtraTreeRegressor
ExtraTreesRegressor
RandomForestRegressor
GradientBoostingRegressor
LightGBM
LGBMClassifier
LGBMRegressor
Booster
XGBoost
XGBClassifier
XGBRFClassifier
XGBRegressor
XGBRFRegressor
Booster
If we do not support the model you want to use, please let us know.
Examples
Decision Tree classifier on iris data.
from sklearn.tree import DecisionTreeClassifier
from sklearn.datasets import load_iris
from supertree import SuperTree # <- import supertree :)
# Load the iris dataset
iris = load_iris()
X, y = iris.data, iris.target
# Train model
model = DecisionTreeClassifier()
model.fit(X, y)
# Initialize supertree
super_tree = SuperTree(model, X, y, iris.feature_names, iris.target_names)
# show tree in your notebook
super_tree.show_tree()
Random Forest Regressor Example
from sklearn.ensemble import RandomForestRegressor
from sklearn.datasets import load_diabetes
from supertree import SuperTree # <- import supertree :)
# Load the diabetes dataset
diabetes = load_diabetes()
X = diabetes.data
y = diabetes.target
# Train model
model = RandomForestRegressor(n_estimators=100, random_state=42)
model.fit(X_train, y_train)
# Initialize supertree
super_tree = SuperTree(model,X, y)
# show tree with index 2 in your notebook
super_tree.show_tree(2)
There are more code snippets in the examples directory.
Support
If you encounter any issues, find a bug, or have a feature request, we would love to hear from you! Please don't hesitate to reach out to us at supertree/issues. We are committed to improving this package and appreciate any feedback or suggestions you may have.
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