ICCm | R Documentation |
Computes ICC values for lme4-fitted mixed-effects models.
ICCm(model, re_type = c("NA"))
model |
A linear mixed-effects model of class lmerMod or lmerModLmerTest |
re_type |
A value indicating whether a model with two random effects is nested or cross-classified |
If re_type
is "NA", the proportion of variance at the random effect is computed.
If re_type = "nested", the likeness of y scores in the same level 3 unit (the proportion of variance at Level3_factor), the likeness of y scores in the same level 2 units in the same level 3 unit (proportion of variance at Level3_factor and Level2_factor), and the likeness of level 2 units in the same level 3 unit (proportion of Level2_factor variance at Level3_factor) are computed.
If re_type = "cc", the likeness of y scores in the same C1_factor unit (correlation between outcome values of units in same C1_factor but different C2_factor), the likeness of y scores in the same C2_factor (correlation between outcome values of units in the same C2_factor but different C2_factor), and the likeness of y scores in the same C1_factor and C2_factor combination (correlation between outcome values of units in the same C2_factor and C2_factor) are computed.
Snijders, T. A. B. & Bosker, R. J. (2012). Multilevel Analysis (2nd Ed.). Sage Publications Ltd. Goldstein, H., Browne, W., & Rasbash, J. (2002). Partitioning variation in multilevel models. Understanding statistics: statistical issues in psychology, education, and the social sciences, 1(4), 223-231.
# Gaussian ## Read in data data(instruction) ## Create model mod <- lme4::lmer(mathgain ~ (1 | classid), data = instruction) ## Estimate ICC ICCm(mod) # Logistic ## Read in data data(reporting) ## Create model mod <- lme4::glmer(mention.outliers ~ Basics + (1 | Journal), data = reporting, family = "binomial") ## Estimate ICC ICCm(mod)
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