A data frame with 2000 observations on the following 6 variables. MLCD is a simulated bivariate longitudinal count dataset assuming there are 500 subjects in the study whose data are collected at 4 equally-spaced time points.
Usage
data(mlcd)
Format
A data frame with 2000 observations on the following 6 variables.
ID
a numeric vector for subject ID
resp1
a numeric vector for the first longitudinal count response
resp2
a numeric vector for the second longitudinal count response
X
a numeric vector for the covariate, X
time
a numeric vector for the time point at which observations are collected
X.time
a numeric vector for the interaction between X and time
Details
The covariates, X and time are the standardized values indeed. The related interaction is calculated by using these standardized values. X is a time-independent covariate.
For the details of data generation see the user manual of the R package mmm at http://cran.r-project.org/web/packages/mmm/index.html.
References
Asar, O. (2012). On multivariate longitudinal binary data models and their applications in forecasting. MS Thesis, Middle East Technical University. Available
at http://www.lancaster.ac.uk/pg/asar/thesis-Ozgur-Asar.
Erhardt, V. (2009). corcounts: Generate Correlated Count Random Variable. R package version 1.4.
URL http://CRAN.R-project.org/package=corcounts.