Survival Mixture Density Networks
Survival analysis, the art of time-to-event modeling, plays an important role in clinical treatment decisions. Recently, continuous time models built from neural ODEs have been proposed for survival analysis. However, the training of neural ODEs is slow due to the high computational complexity of ne...
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Zusammenfassung: | Survival analysis, the art of time-to-event modeling, plays an important role
in clinical treatment decisions. Recently, continuous time models built from
neural ODEs have been proposed for survival analysis. However, the training of
neural ODEs is slow due to the high computational complexity of neural ODE
solvers. Here, we propose an efficient alternative for flexible continuous time
models, called Survival Mixture Density Networks (Survival MDNs). Survival MDN
applies an invertible positive function to the output of Mixture Density
Networks (MDNs). While MDNs produce flexible real-valued distributions, the
invertible positive function maps the model into the time-domain while
preserving a tractable density. Using four datasets, we show that Survival MDN
performs better than, or similarly to continuous and discrete time baselines on
concordance, integrated Brier score and integrated binomial log-likelihood.
Meanwhile, Survival MDNs are also faster than ODE-based models and circumvent
binning issues in discrete models. |
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DOI: | 10.48550/arxiv.2208.10759 |