NP-complete combinatorial optimization problems are important and well-studied, but remain largely enigmatic in fundamental ways. While efficiently finding the optimal solution to such a problem requires that P = NP, we can try to find approximately optimal solutions. To date, the most promising approach for approximating many combinatorial optimization problems has been semidefinite programming, a generalization of linear programming. However semidefinite programs are not as well understood as linear programs. An important question is whether semidefinite (or linear) programs can be improved to create better algorithms.Several processes--Lovasz-Schrijver+ (LS+) and the stronger Lasserre hierarchy for semidefinite programs, and Lovasz-S...
In this paper we investigate matrix inequalities which hold irrespective of the size of the matrices...
We consider the problem of scheduling unrelated parallel machines so as to minimize the total weight...
In this paper, we consider a class of quadratic maximization problems. One important instance in tha...
NP-complete combinatorial optimization problems are important and well-studied, but remain largely e...
The inapproximability for NP-hard combinatorial optimization problems lies in the heart of theoretic...
The inapproximability for NP-hard combinatorial optimization problems lies in the heart of theoretic...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Linear and semidefinite programs are fundamental algorithmic tools, often providing conjecturallyopt...
Hard combinatorial optimization problems are often approximated using linear or semidefinite program...
In this paper, we consider the max-cut problem as studied by Goemans and Williamson [8]. Since the p...
Linear programming (LP) and semidefinite programming (SDP) are among the most important tools in Ope...
During this decade, semidefinite programming has emerged as an important area of optimization due to...
In combinatorial optimization, many problems can be modeled by optimizing a linear functional over ...
The Lasserre hierarchy of semidefinite programming approximations to convex polynomial optimization ...
In this paper we investigate matrix inequalities which hold irrespective of the size of the matrices...
We consider the problem of scheduling unrelated parallel machines so as to minimize the total weight...
In this paper, we consider a class of quadratic maximization problems. One important instance in tha...
NP-complete combinatorial optimization problems are important and well-studied, but remain largely e...
The inapproximability for NP-hard combinatorial optimization problems lies in the heart of theoretic...
The inapproximability for NP-hard combinatorial optimization problems lies in the heart of theoretic...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Linear and semidefinite programs are fundamental algorithmic tools, often providing conjecturallyopt...
Hard combinatorial optimization problems are often approximated using linear or semidefinite program...
In this paper, we consider the max-cut problem as studied by Goemans and Williamson [8]. Since the p...
Linear programming (LP) and semidefinite programming (SDP) are among the most important tools in Ope...
During this decade, semidefinite programming has emerged as an important area of optimization due to...
In combinatorial optimization, many problems can be modeled by optimizing a linear functional over ...
The Lasserre hierarchy of semidefinite programming approximations to convex polynomial optimization ...
In this paper we investigate matrix inequalities which hold irrespective of the size of the matrices...
We consider the problem of scheduling unrelated parallel machines so as to minimize the total weight...
In this paper, we consider a class of quadratic maximization problems. One important instance in tha...