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X-CAL: Explicit Calibration for Survival Analysis.

Authors :
Goldstein M
Han X
Puli A
Perotte AJ
Ranganath R
Source :
Advances in neural information processing systems [Adv Neural Inf Process Syst] 2020 Dec; Vol. 33, pp. 18296-18307.
Publication Year :
2020

Abstract

Survival analysis models the distribution of time until an event of interest, such as discharge from the hospital or admission to the ICU. When a model's predicted number of events within any time interval is similar to the observed number, it is called well-calibrated . A survival model's calibration can be measured using, for instance, distributional calibration (D-CALIBRATION) [Haider et al., 2020] which computes the squared difference between the observed and predicted number of events within different time intervals. Classically, calibration is addressed in post-training analysis. We develop explicit calibration (X-CAL), which turns D-CALIBRATION into a differentiable objective that can be used in survival modeling alongside maximum likelihood estimation and other objectives. X-CAL allows practitioners to directly optimize calibration and strike a desired balance between predictive power and calibration. In our experiments, we fit a variety of shallow and deep models on simulated data, a survival dataset based on MNIST, on length-of-stay prediction using MIMIC-III data, and on brain cancer data from The Cancer Genome Atlas. We show that the models we study can be miscalibrated. We give experimental evidence on these datasets that X-CAL improves D-CALIBRATION without a large decrease in concordance or likelihood.

Details

Language :
English
ISSN :
1049-5258
Volume :
33
Database :
MEDLINE
Journal :
Advances in neural information processing systems
Publication Type :
Academic Journal
Accession number :
34017160