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effect-size

effect-sizeSafety --Repository

Calculate and interpret effect sizes for statistical analyses. Use when: (1) Reporting research results to show practical significance, (2) Meta-analysis to combine study results, (3) Grant writing to justify expected effects, (4) Interpreting published studies beyond p-values, (5) Sample size planning for power analysis.

4 stars
1.2k downloads
Updated 2/2/2026

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SKILL.md

Effect Size Calculation Skill

Purpose

Calculate standardized effect sizes to quantify the magnitude of research findings. Essential for reporting practical significance beyond p-values.

Common Effect Size Measures

Cohen's d (Mean Differences)

Use: T-tests, group comparisons on continuous outcomes

d = (M₁ - M₂) / SD_pooled

Interpretation:
- Small: d = 0.2
- Medium: d = 0.5
- Large: d = 0.8

Pearson's r (Correlations)

Interpretation:

  • Small: r = 0.10
  • Medium: r = 0.30
  • Large: r = 0.50

Eta-squared (η²) and Partial Eta-squared (η²ₚ)

Use: ANOVA, variance explained

η² = SS_effect / SS_total
η²ₚ = SS_effect / (SS_effect + SS_error)

Interpretation:
- Small: η² = 0.01
- Medium: η² = 0.06
- Large: η² = 0.14

Odds Ratio (OR) and Risk Ratio (RR)

Use: Binary outcomes, clinical trials

OR = (a/b) / (c/d)  [from 2x2 table]

Interpretation:
- OR = 1: No effect
- OR > 1: Increased odds
- OR < 1: Decreased odds

Always Report with Confidence Intervals

Example: d = 0.52, 95% CI [0.28, 0.76]

This shows:
- Best estimate: d = 0.52 (medium effect)
- Precision: CI width suggests adequate sample size
- Excludes zero: Effect is statistically significant

Integration

Use with power-analysis skill for study planning and with statistical analysis for results reporting.


Version: 1.0.0

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Requires askill CLI v1.0+

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Metadata

Licenseunknown
Version1.0.0
Updated2/2/2026
Publisherastoreyai

Tags

ci-cd