We present new hierarchical set oriented methods for the numerical solution of multi-objective optimization problems. These
methods are based on a generation of collections of subdomains (boxes) in parameter space which cover the entire set of Pareto
points. In the course of the subdivision procedure these coverings get tighter until a desired granularity of the covering
is reached. For the evaluation of these boxes we make use of evolutionary algorithms. We propose two particular strategies
and discuss combinations of those which lead to a better algorithmic performance. Finally we illustrate the efficiency of
our methods by several examples.