International audienceIn view of solving nonsmooth and nonconvex problems involving complex constraints (like standard NLP problems), we study general maximization-minimization procedures produced by families of strongly convex sub-problems. Using techniques from semi-algebraic geometry and variational analysis -in particular Lojasiewicz inequality- we establish the convergence of sequences generated by this type of schemes to critical points. The broad applicability of this process is illustrated in the context of NLP. In that case critical points coincide with KKT points. When the data are semi-algebraic or real analytic our method applies (for instance) to the study of various SQP methods: the moving balls method, Sl1QP, ESQP. Under stan...
results for a second-derivative SQP method for minimizing the exact ℓ1-merit function for a fixed va...
A common strategy for achieving global convergence in the solution of semi-infinite programming (SIP...
In this paper a family of trust-region interior-point SQP algorithms for the solution of minimizatio...
International audienceIn view of solving nonsmooth and nonconvex problems involving complex constrai...
A mechanism for proving global convergence in SQP--filter methods for nonlinear programming (NLP) is...
Recently, nonlinear programming solvers have been used to solve a range of mathe-matical programs wi...
One of the classes of the methods for solution of the non-linear programming (NLP) problem named the...
summary:We propose an SQP algorithm for mathematical programs with complementarity constraints which...
International audienceDifference-of-Convex programming and related algorithms, which constitute the ...
In this paper we consider infinite dimensional optimization problems with equality constraints. The ...
Sequential quadratic programming (SQP) methods solve nonlinear optimization problems by finding an a...
We study convergence of a semismooth Newton method for generalized semi-infinite programming problem...
In this thesis we develop a unified theory for establishing the local and q-superlinear convergence ...
International audienceIn view of the minimization of a nonsmooth nonconvex function f, we prove an a...
Projet PROMATHThis paper presents some new results in the theory of Newton type methods for variatio...
results for a second-derivative SQP method for minimizing the exact ℓ1-merit function for a fixed va...
A common strategy for achieving global convergence in the solution of semi-infinite programming (SIP...
In this paper a family of trust-region interior-point SQP algorithms for the solution of minimizatio...
International audienceIn view of solving nonsmooth and nonconvex problems involving complex constrai...
A mechanism for proving global convergence in SQP--filter methods for nonlinear programming (NLP) is...
Recently, nonlinear programming solvers have been used to solve a range of mathe-matical programs wi...
One of the classes of the methods for solution of the non-linear programming (NLP) problem named the...
summary:We propose an SQP algorithm for mathematical programs with complementarity constraints which...
International audienceDifference-of-Convex programming and related algorithms, which constitute the ...
In this paper we consider infinite dimensional optimization problems with equality constraints. The ...
Sequential quadratic programming (SQP) methods solve nonlinear optimization problems by finding an a...
We study convergence of a semismooth Newton method for generalized semi-infinite programming problem...
In this thesis we develop a unified theory for establishing the local and q-superlinear convergence ...
International audienceIn view of the minimization of a nonsmooth nonconvex function f, we prove an a...
Projet PROMATHThis paper presents some new results in the theory of Newton type methods for variatio...
results for a second-derivative SQP method for minimizing the exact ℓ1-merit function for a fixed va...
A common strategy for achieving global convergence in the solution of semi-infinite programming (SIP...
In this paper a family of trust-region interior-point SQP algorithms for the solution of minimizatio...