Let E be the Hilbert space of symmetric matrices of the form diag(A, M), where A is n × n, and M is an l × l diagonal matrix, and the inner product hx, yi ≡ T race(xy). Given x ∈ E, we write x ≥ 0 (x > 0) if it is positive semidefinite (positive definite). Let Q : E → E be a symmetric positive semidefinite linear operator, and µ = min{φ(x) = 0.5T race(xQx) : kxk = 1, x ≥ 0}. The feasibility problem in SDP can be formulated as the problem of testing if µ = 0 for some Q. Let ǫ ∈ (0, 1) be a given accuracy, u = Qe − e, e the identity matrix in E, and N = n + l. We describe a simple path-following algorithm that in case µ = 0, in O( √ N ln[Nkuk/ǫ]) Newton iterations produces x ≥ 0, kxk = 1 such that T race(xQx) ≤ ǫ. If µ > 0, in O( √ N ln[Nkuk/...
In this thesis we focus on the study of determinantal structures arising in semidefinite programming...
Many problems of systems control theory boil down to solving polynomial equations, polynomial inequa...
Semidefinite Programming (SDP) is a class of convex optimization problems with a linear objective fu...
AbstractLet E be the Hilbert space of real symmetric matrices with block diagonal form diag(A,M), wh...
In this paper a symmetric primal-dual transformation for positive semidefinite programming is propos...
This paper establishes the polynomial convergence of a new class of primal-dual interior-point path ...
Weighted determinant maximization with linear matrix inequality constraints (maxdet-problem) is a ge...
Abstract. This paper establishes the polynomial convergence of a new class of primal-dual interior-p...
International audienceLet A 0 ,. .. , A n be m × m symmetric matrices with entries in Q, and let A(x...
We build upon the work of Fukuda et al. [9] and Nakata et al. [26], in which the theory of partial p...
In this paper a symmetric primal-dual transformation for positive semidefinite programming is propos...
We consider the general feasibility problem for semidefinite programming: Determine whether a given ...
We present a unified analysis for a class of long-step primal-dual path-following algorithms for sem...
In this paper, we consider two different formulations (one is smooth and the other one is nonsmooth)...
Semidefinite programming (SDP) is an extension of linear programming, with vector variables replaced...
In this thesis we focus on the study of determinantal structures arising in semidefinite programming...
Many problems of systems control theory boil down to solving polynomial equations, polynomial inequa...
Semidefinite Programming (SDP) is a class of convex optimization problems with a linear objective fu...
AbstractLet E be the Hilbert space of real symmetric matrices with block diagonal form diag(A,M), wh...
In this paper a symmetric primal-dual transformation for positive semidefinite programming is propos...
This paper establishes the polynomial convergence of a new class of primal-dual interior-point path ...
Weighted determinant maximization with linear matrix inequality constraints (maxdet-problem) is a ge...
Abstract. This paper establishes the polynomial convergence of a new class of primal-dual interior-p...
International audienceLet A 0 ,. .. , A n be m × m symmetric matrices with entries in Q, and let A(x...
We build upon the work of Fukuda et al. [9] and Nakata et al. [26], in which the theory of partial p...
In this paper a symmetric primal-dual transformation for positive semidefinite programming is propos...
We consider the general feasibility problem for semidefinite programming: Determine whether a given ...
We present a unified analysis for a class of long-step primal-dual path-following algorithms for sem...
In this paper, we consider two different formulations (one is smooth and the other one is nonsmooth)...
Semidefinite programming (SDP) is an extension of linear programming, with vector variables replaced...
In this thesis we focus on the study of determinantal structures arising in semidefinite programming...
Many problems of systems control theory boil down to solving polynomial equations, polynomial inequa...
Semidefinite Programming (SDP) is a class of convex optimization problems with a linear objective fu...