This chapter sets out a number of the popular areas in multi-objective supervised learning. It gives empirical examples of model complexity optimisation and competing error terms, and presents the recent advances in multi-class receiver operating characteristic analysis enabled by multi-objective optimisation.It concludes by highlighting some specific areas of interest/concern when dealing with multi-objective supervised learning problems, and sets out future areas of potential research.