General linear regression enables us to evaluate the association between a continuous outcome variable and one or more continuous or categorical predictor variables. The model we fit is linear, which means we summarise the data with a straight line that best describes the data by minimising the distance between the actual data and the predictions of the regression line. Multiple regression allows us to determine the overall fit of the model and the relative contribution of each of the predictors to the variance explained. With our longitudinal data, we can try and explain a later life outcome for a particular person by whatever model we fit to the data using information about that person from earlier in their life.
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