On Accelerated Failure Time Models Performance Under Progressive Type-II Censoring

  • Amal Helu The University of Jordan
  • Hani Samawi Georgia Southern University
  • Majd Alslman The University of Jordan
Keywords: Accelerated failure time model; hazard ratio; progressive type-II censoring; survival analysis.

Abstract

Accelerated failure time (AFT) models have intensive applications in many research areas, including but not limited to behavioral, chronic (e.g., cancer), and infectious diseases (e.g., HIV) research. In this paper, we investigate the performance of the AFT models when Progressive Type-II censoring schemes are performed. We demonstrate the usefulness of using these schemes. We discuss their testing procedure power, $Bias$, and $MSE$ of the hazard ratio estimates compared to the same sample size of the uncensored data. Theoretically, we derive the models, the $MLE$ scores, and the Fisher information matrix. A comparison between these estimators is provided by using extensive simulation. A real-life data example is provided to illustrate our proposed estimators.

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Published
2022-04-26
How to Cite
Helu, A., Samawi, H., & Alslman, M. (2022). On Accelerated Failure Time Models Performance Under Progressive Type-II Censoring. Statistics, Optimization & Information Computing, 10(3), 815-828. https://doi.org/10.19139/soic-2310-5070-1446
Section
Research Articles