An intuitive method for analyzing longitudinal data is grounded in the concept that each individual within the population possesses a unique subject-specific mean response profile over time, characterized by a particular functional form.
To formally introduce the representation of longitudinal data, let denote the response of subject , at time . Different subjects tend to have different intercepts and slopes for regression. Therefore, a plausible model is considered as
where the error terms are assumed from . It is customary to assume that the distribution of the regression coefficients in the population is a bivariate normal distribution with mean vector and the variance-covariance matrix . We can reformulate the model as
where are called random effect, having a bivariate normal distribution with mean zero and covariance matrix . and describe the average longitudinal evolution in the population (i.e., averaged over the subjects) and are called fixed effects.