pyStoNED is a Python package that provides functions for estimating multivariate convex regression, convex quantile regression, convex expectile regression, isotonic regression, stochastic nonparametric envelopment of data, and related methods. It also facilitates efficiency measurement using the conventional data envelopement analysis (DEA) and free disposable hull (FDH) approaches. The pyStoNED package allows practitioners to estimate these models in an open access environment under a GPL-3.0 License.
The pyStoNED
package is now avaiable on PyPI and the latest development version can be installed from the Github repository pyStoNED
. Please feel free to download and test it. We welcome any bug reports and feedback.
pip install pystoned
pip install -U git+https://github.com/ds2010/pyStoNED
- Sheng Dai, Associate Professor, School of Economics, Zhongnan University of Economics and Law.
- Yu-Hsueh Fang, Computer Engineer, Institute of Manufacturing Information and Systems, National Cheng Kung University.
- Chia-Yen Lee, Professor, College of Management, National Taiwan University.
- Timo Kuosmanen, Professor, Turku School of Economics, University of Turku.
If you use pyStoNED for published work, we encourage you to cite our following paper and other related works. We appreciate it.
Dai S, Fang YH, Lee CY, Kuosmanen T. (2024). pyStoNED: A Python Package for Convex Regression and Frontier Estimation. Journal of Statistical Software. 111, 1-43.