Keywords: survival analysis, subgroup discovery, Cox model
TL;DR: We introduce a method for finding interpretable subgroups of survival data in which a Cox model makes confident, accurate predictions.
Abstract: We study the problem of subgroup discovery with Cox regression models and introduce a method for finding an interpretable subset of the data on which a Cox model is highly accurate. Our method relies on two technical innovations: the \emph{expected prediction entropy}, a novel metric for evaluating survival models which predict a hazard function; and the \emph{conditional rank distribution}, a statistical object which quantifies the deviation of an individual point to the distribution of survival times in an existing subgroup. Because of the interpretability of the discovered subgroups, in addition to improving the predictive accuracy of the model, they can also form meaningful, data-driven patient cohorts for further study in a clinical setting.
Track: Main track
Submitted Paper: No
Published Paper: No
Submission Number: 68
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