contingency_coef() computes Pearson's contingency coefficient C
for a two-way contingency table.
contingency_coef(
x,
detail = FALSE,
conf_level = 0.95,
digits = 3L,
.include_se = FALSE
)Same structure as cramer_v(): a scalar when
detail = FALSE, a named vector when detail = TRUE.
The p-value tests the null hypothesis of no association
(Pearson chi-squared test). CI values are NA because no
standard asymptotic SE exists for C.
A contingency table (of class table).
Logical. If FALSE (default), return the estimate
as a numeric scalar. If TRUE, return a named numeric vector
including confidence interval and p-value.
A number between 0 and 1 giving the confidence
level (default 0.95). Only used when detail = TRUE. Set
to NULL to omit the confidence interval.
Number of decimal places used when printing the
result (default 3). Only affects the detail = TRUE output.
Internal parameter; do not use.
The contingency coefficient is \(C = \sqrt{\chi^2 / (\chi^2 + n)}\). It ranges from 0 (independence) to a maximum that depends on the table dimensions. No standard asymptotic standard error exists, so the confidence interval is not computed.
cramer_v(), assoc_measures()
Other association measures:
assoc_measures(),
cramer_v(),
gamma_gk(),
goodman_kruskal_tau(),
kendall_tau_b(),
kendall_tau_c(),
lambda_gk(),
phi(),
somers_d(),
uncertainty_coef(),
yule_q()
tab <- table(sochealth$smoking, sochealth$education)
contingency_coef(tab)
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