Aug. 24, 2022, 1:11 a.m. | Mateusz Krzyziński, Mikołaj Spytek, Hubert Baniecki, Przemysław Biecek

cs.LG updates on arXiv.org arxiv.org

Machine and deep learning survival models demonstrate similar or even
improved time-to-event prediction capabilities compared to classical
statistical learning methods yet are too complex to be interpreted by humans.
Several model-agnostic explanations are available to overcome this issue;
however, none directly explain the survival function prediction. In this paper,
we introduce SurvSHAP(t), the first time-dependent explanation that allows for
interpreting survival black-box models. It is based on SHapley Additive
exPlanations with solid theoretical foundations and a broad adoption among
machine …

arxiv learning lg machine machine learning survival time

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