Semidefinite programming (SDP) relaxations are proving to be a powerful tool for finding tight bounds for hard discrete optimization problems. This is especially true for one of the easier NP-hard problems, the Max-Cut problem (MC). The well-known SDP relaxation for Max-Cut, here denoted SDP1, can be derived by a first lifting into matrix space and has been shown to be excellent both in theory and in practice. Recently the present authors have derived a new relaxation using a second lifting. This new relaxation, denoted SDP2, is strictly tighter than the relaxation obtained by adding all the triangle inequalities to the well-known relaxation. In this paper we present new results that further describe the remarkable tightness of this new rel...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...
AbstractIn this paper we study two strengthened semidefinite programming relaxations for the Max-Cut...
In this paper we study two strengthened semidefinite programming relaxations for the Max-Cut problem...
AbstractIn this paper we study two strengthened semidefinite programming relaxations for the Max-Cut...
In this paper we summarize recent results on finding tight semidefinite programming relaxations for ...
Semidefinite programming (SDP) is currently one of the most active areas of research in optimization...
We study the convex set Ln defined by Ln := fX j X = (x ij ) positive semidefinite n \Theta n matri...
We derive a new semidefinite programming relaxation for the general graph partition problem (GPP). O...
In this paper, we consider the max-cut problem as studied by Goemans and Williamson [8]. Since the p...
AbstractSemidefinite programming (SDP) is currently one of the most active areas of research in opti...
AbstractWe study the convex set Ln defined by Ln Z≔ {X|X = (xij) a positive semidefinite n × n matri...
The rise of convex programming has changed the face of many research fields in recent years, machine...
The rise of convex programming has changed the face of many research fields in recent years, machine...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...
AbstractIn this paper we study two strengthened semidefinite programming relaxations for the Max-Cut...
In this paper we study two strengthened semidefinite programming relaxations for the Max-Cut problem...
AbstractIn this paper we study two strengthened semidefinite programming relaxations for the Max-Cut...
In this paper we summarize recent results on finding tight semidefinite programming relaxations for ...
Semidefinite programming (SDP) is currently one of the most active areas of research in optimization...
We study the convex set Ln defined by Ln := fX j X = (x ij ) positive semidefinite n \Theta n matri...
We derive a new semidefinite programming relaxation for the general graph partition problem (GPP). O...
In this paper, we consider the max-cut problem as studied by Goemans and Williamson [8]. Since the p...
AbstractSemidefinite programming (SDP) is currently one of the most active areas of research in opti...
AbstractWe study the convex set Ln defined by Ln Z≔ {X|X = (xij) a positive semidefinite n × n matri...
The rise of convex programming has changed the face of many research fields in recent years, machine...
The rise of convex programming has changed the face of many research fields in recent years, machine...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...
We consider low-rank semidefinite programming (LRSDP) relaxations of unconstrained {−1, 1} quadrati...