نتایج جستجو برای: convex quadratic semidefinite optimization problem

تعداد نتایج: 1166619  

Journal: :Math. Program. 2012
Etienne de Klerk Renata Sotirov

Semidefinite programming (SDP) bounds for the quadratic assignment problem (QAP) were introduced in: [Q. Zhao, S.E. Karisch, F. Rendl, and H. Wolkowicz. Semidefinite Programming Relaxations for the Quadratic Assignment Problem. Journal of Combinatorial Optimization, 2, 71–109, 1998.] Empirically, these bounds are often quite good in practice, but computationally demanding, even for relatively s...

Journal: :Comp. Opt. and Appl. 2005
Stephen Braun John E. Mitchell

The presence of complementarity constraints brings a combinatorial flavour to an optimization problem. A quadratic programming problem with complementarity constraints can be relaxed to give a semidefinite programming problem. The solution to this relaxation can be used to generate feasible solutions to the complementarity constraints. A quadratic programming problem is solved for each of these...

Journal: :SIAM J. Numerical Analysis 2012
Stefania Bellavia Valentina De Simone Daniela di Serafino Benedetta Morini

We propose a framework for building preconditioners for sequences of linear systems of the form (A+∆k)xk = bk, where A is symmetric positive semidefinite and ∆k is diagonal positive semidefinite. Such sequences arise in several optimization methods, e.g., in affine-scaling methods for bound-constrained convex quadratic programming and bound-constrained linear least squares, as well as in trust-...

2018
ALPER ATAMTÜRK

We describe strong convex valid inequalities for conic quadratic mixed 0-1 optimization. The inequalities exploit the submodularity of the binary restrictions and are based on the polymatroid inequalities over binaries for the diagonal case. We prove that the convex inequalities completely describe the convex hull of a single conic quadratic constraint as well as the rotated cone constraint ove...

2005
STEVEN J. BENSON

The use of semidefinite programming in combinatorial optimization continues to grow. This growth can be attributed to at least three factors: new semidefinite relaxations that provide tractable bounds to hard combinatorial problems, algorithmic advances in the solution of semidefinite programs (SDP), and the emergence of parallel computing. Solution techniques for minimizing combinatorial probl...

2012
Naohiko Arima Sunyoung Kim Masakazu Kojima

We propose a class of quadratic optimization problems whose exact optimal objective values can be computed by their completely positive cone programming relaxations. The objective function can be any quadratic form. The constraints of each problem are described in terms of quadratic forms with no linear terms, and all constraints are homogeneous equalities, except one inhomogeneous equality whe...

Journal: :Math. Program. 2014
Paula Amaral Immanuel M. Bomze Joaquim Júdice

We provide Completely Positive and Copositive Optimization formulations for the Constrained Fractional Quadratic Problem (CFQP) and Standard Fractional Quadratic Problem (StFQP). Based on these formulations, Semidefinite Programming (SDP) relaxations are derived for finding good lower bounds to these fractional programs, which can be used in a global optimization branch-and-bound approach. Appl...

Journal: :SIAM Journal on Optimization 2009
Jérôme Malick Janez Povh Franz Rendl Angelika Wiegele

We introduce a new class of algorithms for solving linear semidefinite programming (SDP) problems. Our approach is based on classical tools from convex optimization such as quadratic regularization and augmented Lagrangian techniques. We study the theoretical properties and we show that practical implementations behave very well on some instances of SDP having a large number of constraints. We ...

2006
Matthew Peet Antonis Papachristodoulou Sanjay Lall

This paper presents a time-domain approach to stability analysis of linear time-delay systems using positive quadratic forms. We show that positivity of these forms is equivalent to certain convex constraints on the functions which define them. These results are then combined with recent developments in polynomial optimization to construct a nested sequence of sufficient conditions for stabilit...

Journal: :SIAM Journal on Optimization 2013
Naohiko Arima Sunyoung Kim Masakazu Kojima

We propose a class of quadratic optimization problems whose exact optimal objective values can be computed by their completely positive cone programming relaxations. The objective function can be any quadratic form. The constraints of each problem are described in terms of quadratic forms with no linear terms, and all constraints are homogeneous equalities, except one inhomogeneous equality whe...

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