Current generalizations of the central ideas of single-objective branch-and-bound to the multiobjective setting do not seem to follow their train of thought all the way. The present paper complements the various suggestions for generalizations of partial lower bounds and of overall upper bounds by general constructions for overall lower bounds from partial lower bounds, and by the corresponding termination criteria and node selection steps. In particular, our branch-and-bound concept employs a new enclosure of the set of nondominated points by a union of boxes. On this occasion we also suggest a new discarding test based on a linearization technique. We provide a convergence proof for our general branch-and-bound framework and illustrate th...
Branch and Bound (B&B) algorithms in Global Optimization are used to perform an exhaustive search ov...
We present improvements to branch and bound techniques for globally optimizing func-tions with Lipsc...
Most real-world optimization problems are multi-objective by nature, with conflicting and incomparab...
Current generalizations of the central ideas of single-objective branch-and-bound to the multiobject...
Branch and bound algorithms are methods for global optimization in nonconvex prob-lems [LW66, Moo91]...
We introduce a very simple but e±cient idea for branch & bound (B&B) algorithms in global op...
This monograph deals with a general class of solution approaches in deterministic global optimizatio...
Abstract. In the early 1990s, we proposed the integration of constraint programming and optimization...
We address the problem of determining convergent upper bounds in continuous non-convex global minimi...
An approach to non-convex multi-objective optimization problems is considered where only the values ...
Abstract: "Branch-and-bound methods have been used with mixed results for global optimization proble...
Branch and bound algorithms have to cope with several additional difficulties in the multi-objective...
Abstract. A branch and bound global optimization method, BB, for general continuous optimization pro...
International audienceThis paper focuses on a multiobjective derivation of branch-and-bound procedur...
To unify and generalize the branch-and-bound method used in operations research and the heuristic se...
Branch and Bound (B&B) algorithms in Global Optimization are used to perform an exhaustive search ov...
We present improvements to branch and bound techniques for globally optimizing func-tions with Lipsc...
Most real-world optimization problems are multi-objective by nature, with conflicting and incomparab...
Current generalizations of the central ideas of single-objective branch-and-bound to the multiobject...
Branch and bound algorithms are methods for global optimization in nonconvex prob-lems [LW66, Moo91]...
We introduce a very simple but e±cient idea for branch & bound (B&B) algorithms in global op...
This monograph deals with a general class of solution approaches in deterministic global optimizatio...
Abstract. In the early 1990s, we proposed the integration of constraint programming and optimization...
We address the problem of determining convergent upper bounds in continuous non-convex global minimi...
An approach to non-convex multi-objective optimization problems is considered where only the values ...
Abstract: "Branch-and-bound methods have been used with mixed results for global optimization proble...
Branch and bound algorithms have to cope with several additional difficulties in the multi-objective...
Abstract. A branch and bound global optimization method, BB, for general continuous optimization pro...
International audienceThis paper focuses on a multiobjective derivation of branch-and-bound procedur...
To unify and generalize the branch-and-bound method used in operations research and the heuristic se...
Branch and Bound (B&B) algorithms in Global Optimization are used to perform an exhaustive search ov...
We present improvements to branch and bound techniques for globally optimizing func-tions with Lipsc...
Most real-world optimization problems are multi-objective by nature, with conflicting and incomparab...