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Marginal model

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In statistics, marginal models are a technique for obtaining regression estimates in multilevel modeling, also called hierarchical linear models 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 (). In a marginal model, we collapse over the level 1 & 2 residuals and thus marginalize (see also conditional probability) the joint distribution into an univariate normal distribution. We then fit the marginal model to data.

For example, for the following hierarchical model,

level 1: , the residual is , and
level 2: , the residual is , and

Thus, the marginal model is,

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

Reference

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