Marginal model

In statistics, marginal models (Heagerty & Zeger, 2000) are a technique for obtaining regression estimates in multilevel modeling, also called hierarchical linear models. People often want to know the effect of a predictor/explanatory variable X, on a response variable Y. One way to get an estimate for such effects is through regression analysis.

Why the name marginal model?

In a typical multilevel model, there are level 1 & 2 residuals (R and U variables). The two variables form a joint distribution for the response variable ( Y i j {\displaystyle Y_{ij}} ). In a marginal model, we collapse over the level 1 & 2 residuals and thus marginalize (see also conditional probability) the joint distribution into a univariate normal distribution. We then fit the marginal model to data.

For example, for the following hierarchical model,

level 1: Y i j = β 0 j + R i j {\displaystyle Y_{ij}=\beta _{0j}+R_{ij}} , the residual is R i j {\displaystyle R_{ij}} , and var ( R i j ) = σ 2 {\displaystyle \operatorname {var} (R_{ij})=\sigma ^{2}}
level 2: β 0 j = γ 00 + U 0 j {\displaystyle \beta _{0j}=\gamma _{00}+U_{0j}} , the residual is U 0 j {\displaystyle U_{0j}} , and var ( U 0 j ) = τ 0 2 {\displaystyle \operatorname {var} (U_{0j})=\tau _{0}^{2}}

Thus, the marginal model is,

Y i j N ( γ 00 , ( τ 0 2 + σ 2 ) ) {\displaystyle Y_{ij}\sim N(\gamma _{00},(\tau _{0}^{2}+\sigma ^{2}))}

This model is what is used to fit to data in order to get regression estimates.

References

Heagerty, P. J., & Zeger, S. L. (2000). Marginalized multilevel models and likelihood inference. Statistical Science, 15(1), 1-26.


  • v
  • t
  • e