SHAP¶
Implementation of the most popular algorithm for black box explainability, from the original paper authors. This is actively maintained and also provides specialized support for different model types, including tree ensembles, transformers, and deep learning models.
Logo |
|
---|---|
Website |
N/A |
Repository |
|
Byline |
A game theoretic approach to explain the output of any machine learning model. |
License |
MIT |
Project age |
6 years |
Backers |
|
Size score (1 to 10, higher is better) |
4.75 |
Trend score (1 to 10, higher is better) |
5.75 |
Education Resources¶
URL |
Resource Type |
Description |
---|---|---|
Documentation |
Official project documentation. |
|
https://papers.nips.cc/paper/2017/hash/8a20a8621978632d76c43dfd28b67767-Abstract.html |
Paper |
Original paper at NeuroIPS 2017 |
Git Commit Statistics¶
Statistics computed using Git data through November 30, 2022.
Statistic |
Lifetime |
Last 12 Months |
---|---|---|
Commits |
2,277 |
250 |
Lines committed |
6,343,114 |
359,294 |
Unique committers |
215 |
43 |
Core committers |
12 |
3 |
Similar Projects¶
Project |
Size Score |
Trend Score |
Byline |
---|---|---|---|
3.75 |
8.25 |
Algorithms for monitoring and explaining machine learning models. |
|
2.0 |
7.5 |
Generate Diverse Counterfactual Explanations for any machine learning model. |
|
4.0 |
9.0 |
Shapash makes Machine Learning models transparent and understandable by everyone |