skills/analysis/statistics/nonparametric-tests-guide/SKILL.md
Apply Mann-Whitney, Kruskal-Wallis, and other nonparametric methods
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A skill for selecting and applying nonparametric statistical tests when data violate parametric assumptions. Covers rank-based tests for group comparisons, correlation, and paired data, with implementation examples and guidance on reporting.
Use nonparametric tests when:
- Data are ordinal (Likert scales, rankings)
- Distribution is clearly non-normal (heavy skew, outliers)
- Sample size is very small (n < 15-20 per group)
- Homogeneity of variance is violated
- You are analyzing ranks or medians rather than means
Use parametric tests when:
- Data are approximately normal (or n > 30 by CLT)
- Variance is homogeneous across groups
- You need greater statistical power
- The parametric assumptions are reasonably met
| Parametric Test | Nonparametric Alternative | Use Case | |----------------|--------------------------|----------| | Independent t-test | Mann-Whitney U | Compare 2 independent groups | | Paired t-test | Wilcoxon signed-rank | Compare 2 related samples | | One-way ANOVA | Kruskal-Wallis H | Compare 3+ independent groups | | Repeated measures ANOVA | Friedman test | Compare 3+ related samples | | Pearson correlation | Spearman rank correlation | Measure association | | Chi-square test | Fisher's exact test | Compare proportions (small n) |
from scipy import stats
import numpy as np
def mann_whitney_test(group_a: list, group_b: list) -> dict:
"""
Perform Mann-Whitney U test for two independent groups.
Args:
group_a: Observations from group A
group_b: Observations from group B
"""
statistic, p_value = stats.mannwhitneyu(
group_a, group_b, alternative="two-sided"
)
n_a, n_b = len(group_a), len(group_b)
# Rank-biserial correlation as effect size
r = 1 - (2 * statistic) / (n_a * n_b)
return {
"U_statistic": statistic,
"p_value": p_value,
"n_a": n_a,
"n_b": n_b,
"median_a": np.median(group_a),
"median_b": np.median(group_b),
"effect_size_r": abs(r),
"effect_interpretation": (
"small" if abs(r) < 0.3
else "medium" if abs(r) < 0.5
else "large"
)
}
# Example usage
control = [12, 15, 14, 10, 13, 11, 16, 9, 14, 12]
treatment = [18, 22, 19, 17, 20, 21, 16, 23, 19, 20]
result = mann_whitney_test(control, treatment)
print(f"U = {result['U_statistic']}, p = {result['p_value']:.4f}")
print(f"Effect size r = {result['effect_size_r']:.3f} ({result['effect_interpretation']})")
def kruskal_wallis_with_posthoc(*groups) -> dict:
"""
Perform Kruskal-Wallis test with Dunn's post-hoc comparisons.
Args:
*groups: Variable number of group data arrays
"""
# Omnibus test
h_stat, p_value = stats.kruskal(*groups)
result = {
"H_statistic": h_stat,
"p_value": p_value,
"n_groups": len(groups),
"group_medians": [np.median(g) for g in groups]
}
# If significant, perform pairwise Mann-Whitney with Bonferroni correction
if p_value < 0.05:
n_comparisons = len(groups) * (len(groups) - 1) // 2
pairwise = []
for i in range(len(groups)):
for j in range(i + 1, len(groups)):
u, p = stats.mannwhitneyu(groups[i], groups[j])
pairwise.append({
"comparison": f"Group {i+1} vs Group {j+1}",
"U": u,
"p_raw": p,
"p_adjusted": min(p * n_comparisons, 1.0),
"significant": (p * n_comparisons) < 0.05
})
result["posthoc"] = pairwise
return result
def wilcoxon_signed_rank(before: list, after: list) -> dict:
"""
Perform Wilcoxon signed-rank test for paired data.
Args:
before: Pre-intervention measurements
after: Post-intervention measurements
"""
statistic, p_value = stats.wilcoxon(before, after)
n = len(before)
# Effect size: r = Z / sqrt(N)
z_score = stats.norm.ppf(1 - p_value / 2)
r = z_score / np.sqrt(n)
differences = [a - b for a, b in zip(after, before)]
return {
"W_statistic": statistic,
"p_value": p_value,
"n_pairs": n,
"median_difference": np.median(differences),
"effect_size_r": abs(r)
}
def spearman_correlation(x: list, y: list) -> dict:
"""
Compute Spearman rank correlation.
"""
rho, p_value = stats.spearmanr(x, y)
return {
"rho": rho,
"p_value": p_value,
"interpretation": (
"negligible" if abs(rho) < 0.1
else "weak" if abs(rho) < 0.3
else "moderate" if abs(rho) < 0.5
else "strong" if abs(rho) < 0.7
else "very strong"
)
}
Mann-Whitney U:
"A Mann-Whitney U test indicated that treatment scores
(Mdn = 20.0) were significantly higher than control scores
(Mdn = 13.0), U = 5.0, p < .001, r = .82."
Kruskal-Wallis:
"A Kruskal-Wallis H test showed a significant difference
in scores across the three conditions, H(2) = 15.32,
p < .001. Post-hoc pairwise comparisons with Bonferroni
correction revealed..."
Wilcoxon Signed-Rank:
"A Wilcoxon signed-rank test showed that the intervention
significantly improved scores (Mdn_diff = 4.5),
W = 12.0, p = .003, r = .58."
Spearman:
"There was a strong positive correlation between X and Y,
r_s = .72, p < .001."
Always report effect sizes alongside p-values. For rank-biserial correlation r: small (0.1), medium (0.3), large (0.5). For Spearman rho, use standard correlation benchmarks. Effect sizes allow readers to judge practical significance independent of sample size.
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