Sherali and Adams [SA90], Lovász and Schrijver [LS91] and, recently, Lasserre [Las01b] have proposed lift and project methods for constructing hierarchies of successive linear or semidefinite relaxations of a 0-1 polytope P⊆ Rn converging to P in n steps. Lasserre's approach uses results about representations of positive polynomials as sums of squares and the dual theory of moments. We present the three methods in a common elementary framework and show that the Lasserre construction provides the tightest relaxations of P. As an application this gives a direct simple proof for the convergence of the Lasserre's hierarchy. We describe applications to the stable set polytope and to the cut polytope
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
NP-complete combinatorial optimization problems are important and well-studied, but remain largely e...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Sherali and Adams [SA90], Lov'asz and Schrijver [LS91] and, recently, Lasserre [Las01b] have propos...
Sherali and Adams [SA90], Lovász and Schrijver [LS91] and, recently, Lasserre [Las01b] have proposed...
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...
We study Lovász and Schrijver's hierarchy of relaxations based on positive semidefiniteness constrai...
AbstractIn this paper, we consider the set partitioning polytope and we begin by applying the reform...
We explore some connections between association schemes and the analyses of the semidefinite program...
This paper analyzes the relation between different orders of the Lasserre hierarchy for polynomial o...
AbstractIn this paper we study two strengthened semidefinite programming relaxations for the Max-Cut...
The Lasserre hierarchy of semidefinite programming approximations to convex polynomial optimization ...
We give two results concerning the power of the Sum-Of-Squares(SoS)/Lasserre hierarchy. For binary p...
AbstractIn this paper we introduce DRL*, a new hierarchy of linear relaxations for 0–1 mixed integer...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
NP-complete combinatorial optimization problems are important and well-studied, but remain largely e...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
Sherali and Adams [SA90], Lov'asz and Schrijver [LS91] and, recently, Lasserre [Las01b] have propos...
Sherali and Adams [SA90], Lovász and Schrijver [LS91] and, recently, Lasserre [Las01b] have proposed...
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...
We study Lovász and Schrijver's hierarchy of relaxations based on positive semidefiniteness constrai...
AbstractIn this paper, we consider the set partitioning polytope and we begin by applying the reform...
We explore some connections between association schemes and the analyses of the semidefinite program...
This paper analyzes the relation between different orders of the Lasserre hierarchy for polynomial o...
AbstractIn this paper we study two strengthened semidefinite programming relaxations for the Max-Cut...
The Lasserre hierarchy of semidefinite programming approximations to convex polynomial optimization ...
We give two results concerning the power of the Sum-Of-Squares(SoS)/Lasserre hierarchy. For binary p...
AbstractIn this paper we introduce DRL*, a new hierarchy of linear relaxations for 0–1 mixed integer...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...
NP-complete combinatorial optimization problems are important and well-studied, but remain largely e...
Studying the approximation threshold of NP-hard optimization problems, i.e. the ratio of the objecti...