I would like to develop an analysis that looks into cluster-level effects of predictors on two different groups, preferably estimated in a unified analysis.
Consider girls and boys (groups) in many schools (clusters). Scores for the dependent variable vary substantially across schools, but differently so for girls and boys. Effects of predictors too vary for the two genders. Rather than doing straight-forward group-based analyses (one multilevel for boys, one multilevel for girls), I would like to have an analysis that integrates data from both groups. In principle, the cluster level could have different dependent variables, within a unified analysis, one dependent variable for boys, one dependent variable for girls, allowing for estimations of how these two different variables are related with each other within clusters and how a predictor affects them differntly, potentially in opposite ways.
I haven'f found any example of an analysis using this approach, but I am aware of a "web note" by the Mplus team (web note 16) that takes up this challenge within the framework of multilevel modelling, but without giving clear answers.
I am not sure a variant of multilevel modelling is the only way to go, even though this was my starting point. I could focus on the cluster-level only, thus not necessarily using multilevel modelling.
Any thoughts would be highly appreciated.
Consider girls and boys (groups) in many schools (clusters). Scores for the dependent variable vary substantially across schools, but differently so for girls and boys. Effects of predictors too vary for the two genders. Rather than doing straight-forward group-based analyses (one multilevel for boys, one multilevel for girls), I would like to have an analysis that integrates data from both groups. In principle, the cluster level could have different dependent variables, within a unified analysis, one dependent variable for boys, one dependent variable for girls, allowing for estimations of how these two different variables are related with each other within clusters and how a predictor affects them differntly, potentially in opposite ways.
I haven'f found any example of an analysis using this approach, but I am aware of a "web note" by the Mplus team (web note 16) that takes up this challenge within the framework of multilevel modelling, but without giving clear answers.
I am not sure a variant of multilevel modelling is the only way to go, even though this was my starting point. I could focus on the cluster-level only, thus not necessarily using multilevel modelling.
Any thoughts would be highly appreciated.
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