English

Dynamic likelihood hazard rate estimation

Methodology 2026-02-20 v1

Abstract

The best known methods for estimating hazard rate functions in survival analysis models are either purely parametric or purely nonparametric. The parametric ones are sometimes too biased while the nonparametric ones are sometimes too variable. In the present paper a certain semiparametric approach to hazard rate estimation, proposed in Hjort (1991), is developed further, aiming to combine parametric and nonparametric features. It uses a dynamic local likelihood approach to fit the locally most suitable member in a given parametric class of hazard rates, and amounts to a version of nonparametric parameter smoothing within the parametric class. Thus the parametric hazard rate estimate at time ss inserts a parameter estimate that also depends on ss. We study bias and variance properties of the resulting estimator and methods for choosing the local smoothing parameter. It is shown that dynamic likelihood estimation often leads to better performance than the purely nonparametric methods, while also having capacity for not losing much to the parametric methods in cases where the model being smoothed is adequate.

Keywords

Cite

@article{arxiv.2602.17161,
  title  = {Dynamic likelihood hazard rate estimation},
  author = {Nils Lid Hjort},
  journal= {arXiv preprint arXiv:2602.17161},
  year   = {2026}
}

Comments

20 pages, no figures; Statistical Research Report from 1993 (Department of Mathematics, University of Oslo); accepted with "minor revision" by Biometrika then, but somehow I never got around to do the final polish. This report, arXiv'd now in 2026, might be modified and updated (and illustrated with real data) for later journal publication