Conformalized survival analysis with adaptive cutoffs
Yu Gui, Rohan Hore, Zhimei Ren, Rina Foygel Barber

TL;DR
This paper proposes an adaptive, covariate-dependent conformal method for survival analysis that constructs more accurate lower predictive bounds with valid coverage, improving over fixed-threshold approaches.
Contribution
It introduces a data-adaptive subsetting technique for conformal survival analysis that captures heterogeneity and enhances the accuracy of predictive bounds.
Findings
Achieves nearly exact marginal coverage under certain conditions.
Produces less conservative and more precise lower bounds.
Demonstrates superior performance in numerical experiments.
Abstract
This paper introduces an assumption-lean method that constructs valid and efficient lower predictive bounds (LPBs) for survival times with censored data. We build on recent work by Cand\`es et al. (2021), whose approach first subsets the data to discard any data points with early censoring times, and then uses a reweighting technique (namely, weighted conformal inference (Tibshirani et al., 2019)) to correct for the distribution shift introduced by this subsetting procedure. For our new method, instead of constraining to a fixed threshold for the censoring time when subsetting the data, we allow for a covariate-dependent and data-adaptive subsetting step, which is better able to capture the heterogeneity of the censoring mechanism. As a result, our method can lead to LPBs that are less conservative and give more accurate information. We show that in the Type I right-censoring setting,…
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Taxonomy
TopicsStatistical Methods and Inference · Statistical Methods and Bayesian Inference · Advanced Causal Inference Techniques
