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Disentangling Whether from When in a Neural Mixture Cure Model for Failure Time Data.

Publication ,  Journal Article
Engelhard, M; Henao, R
Published in: Proc Mach Learn Res
March 2022

The mixture cure model allows failure probability to be estimated separately from failure timing in settings wherein failure never occurs in a subset of the population. In this paper, we draw on insights from representation learning and causal inference to develop a neural network based mixture cure model that is free of distributional assumptions, yielding improved prediction of failure timing, yet still effectively disentangles information about failure timing from information about failure probability. Our approach also mitigates effects of selection biases in the observation of failure and censoring times on estimation of the failure density and censoring density, respectively. Results suggest this approach could be applied to distinguish factors predicting failure occurrence versus timing and mitigate biases in real-world observational datasets.

Duke Scholars

Published In

Proc Mach Learn Res

EISSN

2640-3498

Publication Date

March 2022

Volume

151

Start / End Page

9571 / 9581

Location

United States
 

Citation

APA
Chicago
ICMJE
MLA
NLM
Engelhard, M., & Henao, R. (2022). Disentangling Whether from When in a Neural Mixture Cure Model for Failure Time Data. Proc Mach Learn Res, 151, 9571–9581.
Engelhard, Matthew, and Ricardo Henao. “Disentangling Whether from When in a Neural Mixture Cure Model for Failure Time Data.Proc Mach Learn Res 151 (March 2022): 9571–81.
Engelhard M, Henao R. Disentangling Whether from When in a Neural Mixture Cure Model for Failure Time Data. Proc Mach Learn Res. 2022 Mar;151:9571–81.
Engelhard, Matthew, and Ricardo Henao. “Disentangling Whether from When in a Neural Mixture Cure Model for Failure Time Data.Proc Mach Learn Res, vol. 151, Mar. 2022, pp. 9571–81.
Engelhard M, Henao R. Disentangling Whether from When in a Neural Mixture Cure Model for Failure Time Data. Proc Mach Learn Res. 2022 Mar;151:9571–9581.

Published In

Proc Mach Learn Res

EISSN

2640-3498

Publication Date

March 2022

Volume

151

Start / End Page

9571 / 9581

Location

United States