AbstractProblems with uncertainties are ubiquitous in many areas of life and the economy. Due to a lack of information as regards the economy and in finance, problems with uncertainties (stock prices, marketing problems, inflation, unemployment) are usually formulated by giving bounds on maximum and minimum values of certain parameters, i.e. box constraints. In such situations, it is necessary to make a choice of better parameters that produce finite intervals of possible values for a given uncertain function at each point of the parameter space. The gamma algorithm presents a method for making that choice. A variant of the gamma algorithm based on the cubic algorithm is considered, for global optimization of uncertain functions with box co...
Depuis une vingtaine d années, la résolution de problèmes d optimisation globale non convexes avec c...
Optimization problems in engineering often have nonconvex objectives and constraints and require glo...
We have recently proposed a rigorous framework for Uncertainty Quantification (UQ) in which UQ objec...
AbstractProblems with uncertainties are ubiquitous in many areas of science and technology. Due to i...
AbstractProblems with uncertainties are ubiquitous in many areas of life and the economy. Due to a l...
AbstractProblems with uncertainties can be viewed and formalized making use of multifunctions or gen...
AbstractA variant of the beta algorithm based on the cubic algorithm [1,2] is presented for global o...
PreprintWe provide the global optimization community with new optimality proofs for 6 deceptive benc...
The use of genetic algorithms for minimization of differentiable functions that are subject to diffe...
Many problems in economy may be formulated as global optimization problems. Most numerically promisi...
Since about thirty years, interval Branch and Bound algorithms are increasingly used to solve constr...
Since about thirty years, interval Branch and Bound algorithms are increasingly used to solve constr...
Reliable global optimization is dedicated to finding a global minimum in the presence of rounding er...
International audienceIn this work, a strategy is developed to deal with the error affecting the obj...
130 pagesThis work covers several aspects of the optimism in the face of uncertainty principle appli...
Depuis une vingtaine d années, la résolution de problèmes d optimisation globale non convexes avec c...
Optimization problems in engineering often have nonconvex objectives and constraints and require glo...
We have recently proposed a rigorous framework for Uncertainty Quantification (UQ) in which UQ objec...
AbstractProblems with uncertainties are ubiquitous in many areas of science and technology. Due to i...
AbstractProblems with uncertainties are ubiquitous in many areas of life and the economy. Due to a l...
AbstractProblems with uncertainties can be viewed and formalized making use of multifunctions or gen...
AbstractA variant of the beta algorithm based on the cubic algorithm [1,2] is presented for global o...
PreprintWe provide the global optimization community with new optimality proofs for 6 deceptive benc...
The use of genetic algorithms for minimization of differentiable functions that are subject to diffe...
Many problems in economy may be formulated as global optimization problems. Most numerically promisi...
Since about thirty years, interval Branch and Bound algorithms are increasingly used to solve constr...
Since about thirty years, interval Branch and Bound algorithms are increasingly used to solve constr...
Reliable global optimization is dedicated to finding a global minimum in the presence of rounding er...
International audienceIn this work, a strategy is developed to deal with the error affecting the obj...
130 pagesThis work covers several aspects of the optimism in the face of uncertainty principle appli...
Depuis une vingtaine d années, la résolution de problèmes d optimisation globale non convexes avec c...
Optimization problems in engineering often have nonconvex objectives and constraints and require glo...
We have recently proposed a rigorous framework for Uncertainty Quantification (UQ) in which UQ objec...