Semidefinite programming is a powerful tool in the design and analysis of approximation algorithms for combinatorial optimization problems. In particular, the random hyperplane rounding method of Goemans and Williamson [23] has been extensively studied for more than two decades, resulting in various extensions to the original technique and beautiful algorithms for a wide range of applications. Despite the fact that this approach yields tight approximation guarantees for some problems, e.g., Max-Cut, for many others, e.g., Max-SAT and Max-DiCut, the tight approximation ratio is still unknown. One of the main reasons for this is the fact that very few techniques for rounding semidefinite relaxations are known. In this work, we present a new g...
AbstractWe investigate the Semidefinite Programming based sums of squares (SOS) decomposition method...
Several important NP-hard combinatorial optimization problems can be posed as packing/covering integ...
SL,BAEb#[1 programming based approximation algorithms, such as the Goemans and Williamson approximat...
Semidefinite programming is a powerful tool in the design and analysis of approximation algorithms f...
We present randomized approximation algorithms for the maximum cut (MAX CUT) and maximum 2-satisfiab...
During this decade, semidefinite programming has emerged as an important area of optimization due to...
We propose two new dependent randomized rounding algorithms for approximating the global maximum of ...
This manuscript shows the following results: 1. The integrality ratio of the semidefinite program is...
We present a general approach to rounding semidefinite programming relaxations obtained by the Sum-o...
In this paper, we consider the max-cut problem as studied by Goemans and Williamson [8]. Since the p...
In this paper we summarize recent results on finding tight semidefinite programming relaxations for ...
We study two of the most central classical optimization problems, namely the Traveling Salesman prob...
In this paper, we consider a class of quadratic maximization problems. One important instance in tha...
Several important NP-hard combinatorial optimization problems can be posed as packing/covering integ...
Abstract: The classical Grothendieck inequality has applications to the design of ap-proximation alg...
AbstractWe investigate the Semidefinite Programming based sums of squares (SOS) decomposition method...
Several important NP-hard combinatorial optimization problems can be posed as packing/covering integ...
SL,BAEb#[1 programming based approximation algorithms, such as the Goemans and Williamson approximat...
Semidefinite programming is a powerful tool in the design and analysis of approximation algorithms f...
We present randomized approximation algorithms for the maximum cut (MAX CUT) and maximum 2-satisfiab...
During this decade, semidefinite programming has emerged as an important area of optimization due to...
We propose two new dependent randomized rounding algorithms for approximating the global maximum of ...
This manuscript shows the following results: 1. The integrality ratio of the semidefinite program is...
We present a general approach to rounding semidefinite programming relaxations obtained by the Sum-o...
In this paper, we consider the max-cut problem as studied by Goemans and Williamson [8]. Since the p...
In this paper we summarize recent results on finding tight semidefinite programming relaxations for ...
We study two of the most central classical optimization problems, namely the Traveling Salesman prob...
In this paper, we consider a class of quadratic maximization problems. One important instance in tha...
Several important NP-hard combinatorial optimization problems can be posed as packing/covering integ...
Abstract: The classical Grothendieck inequality has applications to the design of ap-proximation alg...
AbstractWe investigate the Semidefinite Programming based sums of squares (SOS) decomposition method...
Several important NP-hard combinatorial optimization problems can be posed as packing/covering integ...
SL,BAEb#[1 programming based approximation algorithms, such as the Goemans and Williamson approximat...