quantile-forest

scikit-learn compatible quantile forests.


Keywords
machine-learning, prediction-intervals, python, quantile-regression, quantile-regression-forests, random-forest, scikit-learn-api, uncertainty-estimation
License
Apache-2.0
Install
pip install quantile-forest==1.3.2

Documentation

quantile-forest

PyPI - Version License GitHub Actions Codecov Code Style black DOI

quantile-forest offers a Python implementation of quantile regression forests compatible with scikit-learn.

Quantile regression forests (QRF) are a non-parametric, tree-based ensemble method for estimating conditional quantiles, with application to high-dimensional data and uncertainty estimation [1]. The estimators in this package are performant, Cython-optimized QRF implementations that extend the forest estimators available in scikit-learn to estimate conditional quantiles. The estimators can estimate arbitrary quantiles at prediction time without retraining and provide methods for out-of-bag estimation, calculating quantile ranks, and computing proximity counts. They are compatible with and can serve as drop-in replacements for the scikit-learn forest regressors.

Example of fitted model predictions and prediction intervals on California housing data (code)

Quick Start

Install quantile-forest from PyPI using pip:

pip install quantile-forest

Usage

from quantile_forest import RandomForestQuantileRegressor
from sklearn import datasets
X, y = datasets.fetch_california_housing(return_X_y=True)
qrf = RandomForestQuantileRegressor()
qrf.fit(X, y)
y_pred = qrf.predict(X, quantiles=[0.025, 0.5, 0.975])

Documentation

An installation guide, API documentation, and examples can be found in the documentation.

References

[1] N. Meinshausen, "Quantile Regression Forests", Journal of Machine Learning Research, 7(Jun), 983-999, 2006. http://www.jmlr.org/papers/volume7/meinshausen06a/meinshausen06a.pdf

Citation

If you use this package in academic work, please consider citing https://joss.theoj.org/papers/10.21105/joss.05976:

@article{Johnson2024,
    doi = {10.21105/joss.05976},
    url = {https://doi.org/10.21105/joss.05976},
    year = {2024},
    publisher = {The Open Journal},
    volume = {9},
    number = {93},
    pages = {5976},
    author = {Reid A. Johnson},
    title = {quantile-forest: A Python Package for Quantile Regression Forests},
    journal = {Journal of Open Source Software}
}