A method to obtain the Pareto solutions that are specified by human
preferences is suggested. The main idea is to convert the fuzzy
preferences into interval-based weights. With the help of the
dynamically-weighted aggregation method, it is shown to be successful to
find the preferred solutions on two test functions with a convex Pareto
front. Compared to the method described in "Use of Preferences for
GA-based Multi-Objective Optimization" (Proceedings of 1999 Genetic and
Evolutionary Computation Conference, pp. 1504-1510, 1999) by Cvetkovic et
al., the method according to the invention is able to find a number of
solutions instead of only one, given a set of fuzzy preferences over
different objectives. This is consistent with the motivation of fuzzy
logic.