In multi-criteria optimization, several objective functions are to be optimized. Since the different objective functions are usually in conflict with each other, one cannot consider only one particular solution as optimal. Instead, the aim is to compute so-called Pareto curves. Since Pareto curves cannot be computed efficiently in general, we have to be content with approximations to them. We are concerned with approximating Pareto curves of multi-criteria traveling salesman problems (TSP). We provide algorithms for computing approximate Pareto curves for the symmetric TSP with triangle inequality ( -STSP), symmetric and asymmetric TSP with strengthened triangle inequality (() -STSP and () -ATSP), and symmetric and asymmetric TSP with weights one and two (STSP(1, 2) and ATSP(1, 2)). We design a deterministic polynomial-time algorithm that computes (1 + + )-approximate Pareto curves for multi-criteria () -STSP for [1 2 , 1]. We also present two randomized approximation algorithms for...
Bodo Manthey, L. Shankar Ram