PRNGBinNormal: Pseudo-Random Number Generation of Correlated Binary...

Description Usage Arguments Examples

View source: R/PRNGBinNormal.R

Description

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".

Usage

1
PRNGBinNormal(M, mvec, mu, s, D, beta0, beta1, x, seed)

Arguments

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.

Examples

1

lalondetl/PRNG documentation built on May 20, 2019, 3:06 p.m.