BCa Bootstrap F1 Confidence Interval Method
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A BCa Bootstrap F1 Confidence Interval Method is a bias-corrected bootstrap confidence interval method that adjusts bootstrap percentiles using bias correction and acceleration parameters to improve coverage accuracy for skewed distributions.
- AKA: Bias-Corrected and Accelerated Bootstrap F1 CI, BCa F1 Interval Method, Adjusted Bootstrap F1 CI Method, Accelerated Bootstrap F1 Method.
- Context:
- It can typically compute bias correction z₀ from proportion of bootstrap F1s < observed F1.
- It can typically estimate acceleration parameter a from jackknife influence values.
- It can typically adjust percentiles using Φ(z₀ + (z₀+zₐ)/(1-a(z₀+zₐ))) transformation.
- It can often provide better coverage than simple percentile methods for skewed F1 distributions.
- It can often handle transformation-respecting intervals that maintain range preservation.
- It can often require more computation than basic bootstrap due to jackknife step.
- It can range from being a Standard BCa Bootstrap F1 Confidence Interval Method to being a Smoothed BCa Bootstrap F1 Confidence Interval Method, depending on its percentile estimation.
- It can range from being a Single-Level BCa Bootstrap F1 Confidence Interval Method to being a Multi-Level BCa Bootstrap F1 Confidence Interval Method, depending on its nesting structure.
- It can range from being a Parametric BCa Bootstrap F1 Confidence Interval Method to being a Non-Parametric BCa Bootstrap F1 Confidence Interval Method, depending on its resampling model.
- It can range from being a Fast BCa Bootstrap F1 Confidence Interval Method to being a Exact BCa Bootstrap F1 Confidence Interval Method, depending on its computational shortcuts.
- ...
- Example(s):
- Standard BCa Implementations, such as:
- B=2000 bootstrap samples, n=50 observations.
- Bias correction z₀=0.15, acceleration a=0.03.
- Adjusted 95% CI: [0.72, 0.88] vs percentile [0.70, 0.86].
- Skewed F1 Distributions, such as:
- F1 near 0.95: Strong left skew, BCa shifts interval upward.
- Basic percentile: [0.91, 0.97], BCa: [0.93, 0.98].
- Better coverage for extreme values.
- Comparison with Other Methods, such as:
- Percentile: 91% coverage, BCa: 94.5% coverage (n=30).
- Delta method: symmetric [0.75, 0.85], BCa: asymmetric [0.76, 0.87].
- ABC method: similar coverage but 10x faster.
- ...
- Standard BCa Implementations, such as:
- Counter-Example(s):
- Basic Percentile Bootstrap Method, which uses raw percentiles.
- Bootstrap-t Method, which uses variance estimates.
- Delta-Method F1 Standard Error Estimation Method, which uses analytical approach.
- See: Bootstrap Method, Confidence Interval Method, Bias Correction, Acceleration Parameter, Jackknife Method, Bootstrap F1 Standard Error Estimation Method, Percentile Method, Skewed Distribution, Coverage Probability, Transformation-Respecting Interval, Non-Parametric Inference.