Axioms (Sep 2024)

Calibrating and Visualizing Some Bootstrap Confidence Regions

  • Welagedara Arachchilage Dhanushka M. Welagedara,
  • David J. Olive

DOI
https://doi.org/10.3390/axioms13100659
Journal volume & issue
Vol. 13, no. 10
p. 659

Abstract

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When the bootstrap sample size is moderate, bootstrap confidence regions tend to have undercoverage. Improving the coverage is known as calibrating the confidence region. Consider testing H0:θ=θ0 versus H1:θ≠θ0. We reject H0 only if θ0 is not contained in a large-sample 95% confidence region. If the confidence region has 3% undercoverage for the data set sample size, then the type I error is 8% instead of the nominal 5%. Hence, calibrating confidence regions is also useful for testing hypotheses. Several bootstrap confidence regions are also prediction regions for a future value of a bootstrap statistic. A new bootstrap confidence region uses a simple prediction region calibration technique to improve the coverage. The DD plot for visualizing prediction regions can also be used to visualize some bootstrap confidence regions.

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