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effect-size 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. Read, Write 1.0.0

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