John M. Chambers Statistical Software Award
Awardee:
Hubert Baniecki (Warsaw University of Technology)
for the Python package dalex
JSM talk: dalex: Responsible Machine Learning with Interactive Explainability and Fairness in Python
Slides: PDF
Personal:
- My website: hbaniecki.com
- MI2 lab’s website: mi2.ai
dalex:
- Website: dalex.drwhy.ai
- GitHub: github.com/ModelOriented/DALEX
- START here: python.drwhy.ai
Papers:
- dalex in Python (JMLR, 2021): jmlr.org/papers/v22/20-1473.html
- DALEX in R (JMLR, 2018): jmlr.org/papers/v19/18-416.html
Books:
- Explanatory Model Analysis: Explore, Explain, and Examine Predictive Models (Chapman and Hall/CRC, 2021): ema.drwhy.ai
- The Hitchhiker’s Guide to Responsible Machine Learning (2022): rml.mi2.ai
Tutorials (in R):
- Introduction to Responsible Machine Learning (useR! 2022): github.com/MI2DataLab/ResponsibleML-UseR2022
- Introduction to Responsible Machine Learning (useR! 2021): github.com/MI2DataLab/ResponsibleML-UseR2021
Congratulations to Vittorio Orlandi (Duke University) for the Award’s honorable mention, for the R package FLAME: interpretable matching methods for performing causal inference on observational data with discrete covariates.
Many thanks to:
-
Award’s organizers and the review panel: Raymond Wong (Texas A&M University), Yixuan Qiu (Shanghai University of Finance and Economics), Samantha Tyner (Tritura), Philip Waggoner (YouGov America, Northwestern University, University of Virginia).
-
Wojciech Kretowicz, Mateusz Krzyziński, Piotr Piątyszek, Jakub Wiśniewski, Artur Żółkowski
-
Faculty of Mathematics and Information Science, Warsaw University of Technology
-
National Science Centre (Poland) grants No. 2017/27/B/ST6/01307 and 2019/34/E/ST6/00052