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Nevin Manimala Statistics

Shape-constrained estimation for current duration data in cross-sectional studies

Lifetime Data Anal. 2025 Jun 14. doi: 10.1007/s10985-025-09658-x. Online ahead of print.

ABSTRACT

We study shape-constrained nonparametric estimation of the underlying survival function in a cross-sectional study without follow-up. Assuming the rate of initiation event is stationary over time, the observed current duration becomes a length-biased and multiplicatively censored counterpart of the underlying failure time of interest. We focus on two shape constraints for the underlying survival function, namely, log-concavity and convexity. The log-concavity constraint is versatile as it allows for log-concave densities, bi-log-concave distributions, increasing densities, and multi-modal densities. We establish the consistency and pointwise asymptotic distribution of the shape-constrained estimators. Specifically, the proposed estimator under log-concavity is consistent and tuning-parameter-free, thus circumventing the well-known inconsistency issue of the Grenander estimator at 0, where correction methods typically involve tuning parameters.

PMID:40515884 | DOI:10.1007/s10985-025-09658-x

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