Description Usage Arguments Examples
View source: R/PRNGBinNormal.R
This function produces pseudo-random numbers for responses for correlated (longitudinal) data. The responses are generated as either binary (Bernoulli) data or count (Binomial), using a normally distributed random effect to induce autocorrelation. The predictors must be provided as a vector. The function returns a response vector, labeled "Outcomes".
1  | PRNGBinNormal(M, mvec, mu, s, D, beta0, beta1, x, seed)
 | 
M | 
 The number of groups in the resulting data.  | 
mvec | 
 A vector indicating the length of each group in the data.  | 
mu | 
 The mean of the normal random effect.  | 
s | 
 The standard deviation of the normal random effect.  | 
D | 
 A vector of denominators for each response; a vector of 1's indicates Bernoulli data.  | 
beta0 | 
 The true intercept in the systematic component of the model.  | 
beta1 | 
 The true slope in the systematic component of the model.  | 
x | 
 A vector of predictor values.  | 
seed | 
 The seed for data generation.  | 
1  | 
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