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Bootstrapping01:24

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The term "bootstrap" originated in the 19th century as a metaphor for self-improvement or achieving something independently, without external assistance. This concept extends to statistical bootstrapping, a self-contained method for estimating population parameters through resampling, even though it can be computationally intensive. Developed by the American statistician Dr. Bradley Efron in 1979, bootstrapping provides a robust way to perform inference when the original sample size is...
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Probability is the likelihood of an event occurring. The term event is defined as a collection of results of a procedure. An event is a simple event when an outcome cannot be divided into simpler parts.
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Biostatistics plays a crucial role in understanding and analyzing data in healthcare and biology. Biostatisticians conduct experiments, gather evidence, and draw meaningful conclusions using statistical methods and techniques. Different variables form the foundation of biostatistical analysis, allowing researchers to understand and interpret data effectively. These variables are classified into different types, each serving a specific purpose in statistical analysis.
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Related Experiment Video

Updated: Sep 13, 2025

Using Gold-standard Gait Analysis Methods to Assess Experience Effects on Lower-limb Mechanics During Moderate High-heeled Jogging and Running
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Wild bootstrap for counting process-based statistics: a martingale theory-based approach.

Marina T Dietrich1,2, Dennis Dobler3,4,5, Mathisca C M de Gunst3

  • 1Department of Mathematics, Vrije Universiteit Amsterdam, 1081 HV, Amsterdam, The Netherlands. marina.dietrich@uni-a.de.

Lifetime Data Analysis
|July 28, 2025
PubMed
Summary
This summary is machine-generated.

The wild bootstrap method is validated for time-to-event data analysis using martingale structures. This approach unifies statistical methods and proves the accuracy of inference procedures like hypothesis tests.

Keywords:
Counting processesMartingale theoryResamplingStatistical inferenceSurvival analysisWild bootstrap

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Area of Science:

  • Statistics
  • Survival Analysis
  • Resampling Methods

Background:

  • The wild bootstrap is a widely used resampling technique for time-to-event data.
  • Its large sample properties have been established for various estimators and test statistics.
  • It supports inference procedures like hypothesis tests and time-simultaneous confidence bands.

Purpose of the Study:

  • To present a general, unified framework for establishing large sample properties of the wild bootstrap.
  • To demonstrate the framework's applicability to a broad range of statistical methods in time-to-event analysis.
  • To introduce a novel variant of Rebolledo's martingale central limit theorem.

Main Methods:

  • Utilizing martingale structures to establish large sample properties.
  • Applying the framework to parametric, semiparametric, and nonparametric statistical methods.
  • Developing a new martingale central limit theorem for counting processes.

Main Results:

  • A unified framework for validating the wild bootstrap in time-to-event analysis is established.
  • The framework encompasses most common statistical methods in the field.
  • A new variant of the martingale central limit theorem is derived.

Conclusions:

  • The proposed martingale-based framework provides a robust and unified approach to justifying the wild bootstrap.
  • This work extends the theoretical underpinnings of resampling methods in survival analysis.
  • The newly developed martingale theorem contributes to the statistical theory for counting processes.