In this paper we deal with the parallel approximability of a special class of Quadratic Programming (QP), called Smooth Positive Quadratic Programming. This subclass of QP is obtained by imposing restrictions on the coefficients of the QP instance. The Smoothness condition restricts the magnitudes of the coefficients while the positiveness requires that all the coefficients be non-negative. Interestingly, even with these restrictions several combinatorial problems can be modeled by Smooth QP. We show NC Approximation Schemes for the instances of Smooth Positive QP. This is done by reducing the instance of QP to an instance of Positive Linear Programming, finding in NC an approximate fractional solution to the obtained program, and then roun...
We adapt a method proposed by Nesterov [19] to design an algorithm that computes ε-optim...
10.1109/FOCS.2011.25Proceedings - Annual IEEE Symposium on Foundations of Computer Science, FOCS463-...
In this paper we study the parallel complexity of Positive Linear Programming (PLP), i.e. the specia...
In this paper we deal with the parallel approximability of a special class of Quadratic Programming ...
In this paper we analyze the parallel approximability of two special classes of Quadratic Programmin...
AbstractIn this paper we deal with the parallel approximability of a special class of quadratic prog...
In this paper we show that the problem of Approximating Convex Quadratic Programming is P-complete. ...
In this paper we study the parallel complexity of Positive Linear Programming (PLP), i.e. the specia...
Positive linear programs (LPs), or equivalently, mixed packing and covering LPs, are LPs formulated ...
This paper studies the problem of finding a (1 + ε)-approximation to positive semidefinite programs....
We present an approximation scheme for optimizing certain Quadratic Integer Program-ming problems wi...
We present an approximation scheme for optimizing certain Quadratic Integer Programming problems wit...
Covering relaxation algorithms were first developed by Granot et al for solving positive 0-1 polynom...
We consider the solution of large and sparse linearly constrained quadratic programming problems. We...
Mixed-integer quadratic programming (MIQP) is the problem of optimizing a quadratic function over po...
We adapt a method proposed by Nesterov [19] to design an algorithm that computes ε-optim...
10.1109/FOCS.2011.25Proceedings - Annual IEEE Symposium on Foundations of Computer Science, FOCS463-...
In this paper we study the parallel complexity of Positive Linear Programming (PLP), i.e. the specia...
In this paper we deal with the parallel approximability of a special class of Quadratic Programming ...
In this paper we analyze the parallel approximability of two special classes of Quadratic Programmin...
AbstractIn this paper we deal with the parallel approximability of a special class of quadratic prog...
In this paper we show that the problem of Approximating Convex Quadratic Programming is P-complete. ...
In this paper we study the parallel complexity of Positive Linear Programming (PLP), i.e. the specia...
Positive linear programs (LPs), or equivalently, mixed packing and covering LPs, are LPs formulated ...
This paper studies the problem of finding a (1 + ε)-approximation to positive semidefinite programs....
We present an approximation scheme for optimizing certain Quadratic Integer Program-ming problems wi...
We present an approximation scheme for optimizing certain Quadratic Integer Programming problems wit...
Covering relaxation algorithms were first developed by Granot et al for solving positive 0-1 polynom...
We consider the solution of large and sparse linearly constrained quadratic programming problems. We...
Mixed-integer quadratic programming (MIQP) is the problem of optimizing a quadratic function over po...
We adapt a method proposed by Nesterov [19] to design an algorithm that computes ε-optim...
10.1109/FOCS.2011.25Proceedings - Annual IEEE Symposium on Foundations of Computer Science, FOCS463-...
In this paper we study the parallel complexity of Positive Linear Programming (PLP), i.e. the specia...