This repository contains data and code for the article:
M. Krzyziński, M. Spytek, H. Baniecki, P. Biecek. SurvSHAP(t): Time-dependent explanations of machine learning survival models. Knowledge-Based Systems, 262:110234, 2023. https://doi.org/10.1016/j.knosys.2022.110234
@article{survshap,
title = {SurvSHAP(t): Time-dependent explanations of machine learning survival models},
author = {Mateusz Krzyziński and Mikołaj Spytek and Hubert Baniecki and Przemysław Biecek},
journal = {Knowledge-Based Systems},
volume = {262},
pages = {110234},
year = {2023}
}
In the survshap_package
directory, you will find the code for survshap Python package, which contains the implementation of the SurvSHAP(t) method. Now you can also easily install it from PyPI:
pip install survshap
NOTE: SurvSHAP(t) and SurvLIME are also implemented in the survex R package, along with many more explanation methods for survival models. survex offers explanations for scikit-survival models loaded into R via the reticulate package.
In addition to the package, the repository also contains the materials used for the article (in the paper
directory).
other_codes
survlime.py
is the SurvLIME method implementationsurvnam
directory contains the SurvNAM method implementation (based on Jia-Xiang Chengh implementation)data_generation.R
is the code for synthetic censored data generation (for Experiments 1 and 2)plots.R
is the code for creating Figures from the articledata
data
directory contains the datasets used in experimentsexperiments
experiments
directory contains Jupyter Notebooks (*.ipynb
files) with code of the conducted experiments plots
plots
directory contains Figures in .pdf
formatresults
results
directory contains results of the conducted experiments stored in .csv
files