Simple Bootstrap Method
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A Simple Bootstrap Method is a bootstrap resampling method that performs uniform resampling with replacement from original samples without stratification or structure preservation.
- AKA: Ordinary Bootstrap, Standard Bootstrap, Vanilla Bootstrap, Basic Bootstrap Method.
- Context:
- It can typically assume Independent Identical Distribution of sample observations.
- It can typically generate Bootstrap Samples of same size as original.
- It can often provide Asymptotically Valid inference for smooth statistics.
- It can often fail with Dependent Data or heterogeneous populations.
- It can support Percentile Methods for confidence intervals.
- It can enable Bias Estimation through bootstrap means.
- It can facilitate Variance Estimation for complex estimators.
- It can integrate with Parallel Computing for efficient computation.
- It can range from being a Small-Sample Bootstrap to being a Large-Sample Bootstrap, depending on its sample size.
- It can range from being a Single-Stage Bootstrap to being a Double Bootstrap, depending on its nesting level.
- It can range from being a Parametric Simple Bootstrap to being a Non-Parametric Simple Bootstrap, depending on its distribution assumption.
- It can range from being a Fixed-B Bootstrap to being a Adaptive-B Bootstrap, depending on its iteration count.
- ...
- Examples:
- Basic Implementations, such as:
- Application Areas, such as:
- Computational Variants, such as:
- ...
- Counter-Examples:
- Stratified Bootstrap Method, which preserves stratum structure.
- Block Bootstrap, which handles time dependence.
- Jackknife Method, which uses systematic deletion.
- See: Bootstrap Resampling Method, Stratified Bootstrap Method, Resampling Method, Statistical Inference, Monte Carlo Method, Sampling Distribution, Confidence Interval.