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parameters (version 0.5.0)

random_parameters: Summary information from random effects

Description

This function extracts the different variance components of a mixed model and returns the result as a data frame.

Usage

random_parameters(model)

Arguments

model

A mixed effects model (including stanreg models).

Value

A data frame with random effects statistics for the variance components, including number of levels per random effect group, as well as complete observations in the model.

Details

The variance components are obtained from get_variance and are denoted as following:

Within-group (or residual) variance

The residual variance, , is the sum of the distribution-specific variance and the variance due to additive dispersion. It indicates the within-group variance.

Between-group random intercept variance

The random intercept variance, or between-group variance for the intercept (), is obtained from VarCorr(). It indicates how much groups or subjects differ from each other.

Between-group random slope variance

The random slope variance, or between-group variance for the slopes () is obtained from VarCorr(). This measure is only available for mixed models with random slopes. It indicates how much groups or subjects differ from each other according to their slopes.

Random slope-intercept correlation

The random slope-intercept correlation () is obtained from VarCorr(). This measure is only available for mixed models with random intercepts and slopes.

Examples

Run this code
# NOT RUN {
if (require("lme4")) {
  data(sleepstudy)
  model <- lmer(Reaction ~ Days + (1 + Days | Subject), data = sleepstudy)
  random_parameters(model)
}
# }

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