In
statistics, a
random effect(s) model, also called a
variance components model, is a kind of
hierarchical linear model. It assumes that the dataset being analysed consists of a hierarchy of different populations whose differences relate to that hierarchy. In
econometrics, random effects models are used in the analysis of hierarchical or
panel data when one assumes no
fixed effects (it allows for individual effects). The random effects model is a special case of the
fixed effects model. Contrast this to the
biostatistics definitions, as biostatisticians use "fixed" and "random" effects to respectively refer to the population-average and subject-specific effects (and where the latter are generally assumed to be unknown,
latent variables).