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Article
Ranked Simulated Resampling: A More Efficient and Accurate Resampling Approximations for Bootstrap Inference
Journal of Statistical Computation and Simulation
  • Hani Samawi, Georgia Southern University, Jiann-Ping Hsu College of Public Health
  • Ding-Geng Chen, University of North Carolina, Chapel Hill
Document Type
Article
Publication Date
7-1-2021
DOI
10.1080/00949655.2021.1946065
Disciplines
Abstract

Since its invention, Efron’s bootstrap resampling approach has changed all the aspects of statistical inference, which has become the default framework whenever the classical inference approaches are not feasible. This paper introduces a new, more accurate, and efficient resampling approach, namely, the ranked simulated resampling approach. We show that, analytically and computationally, it is more efficient and precise than Efron’s uniform bootstrap resampling approach. We provide simulation studies and real data applications to support the comparison between the ranked simulated resampling approach and Efron’s uniform bootstrap resampling approach.

Citation Information
Hani Samawi and Ding-Geng Chen. "Ranked Simulated Resampling: A More Efficient and Accurate Resampling Approximations for Bootstrap Inference" Journal of Statistical Computation and Simulation Vol. 91 Iss. 18 (2021) p. 3709 - 3720 ISSN: 1563-5163
Available at: http://works.bepress.com/hani_samawi/277/