General Linear Model methods are the most widely used in data analysis
in applied empirical research. Still, there exists no compact text that
can be used in statistics courses and as a guide in data analysis. This
volume fills this void by introducing the General Linear Model (GLM),
whose basic concept is that an observed variable can be explained from
weighted independent variables plus an additive error term that reflects
imperfections of the model and measurement error. It also covers
multivariate regression, analysis of variance, analysis under
consideration of covariates, variable selection methods, symmetric
regression, and the recently developed methods of recursive partitioning
and direction dependence analysis. Each method is formally derived and
embedded in the GLM, and characteristics of these methods are
highlighted. Real-world data examples illustrate the application of each
of these methods, and it is shown how results can be interpreted.