Abstract

We study convex relaxations of nonconvex quadratic programs. We identify a family of so-called feasibility preserving convex relaxations, which includes the well-known copositive and doubly nonnegative relaxations, with the property that the convex relaxation is feasible if and only if the nonconvex quadratic program is feasible. We observe that each convex relaxation in this family implicitly induces a convex underestimator of the objective function on the feasible region of the quadratic program. This alternative perspective on convex relaxations enables us to establish several useful properties of the corresponding convex underestimators. In particular, if the recession cone of the feasible region of the quadratic program does not contain any directions of negative curvature, we show that the convex underestimator arising from the copositive relaxation is precisely the convex envelope of the objective function of the quadratic program, strengthening Burer’s well-known result on the exactness of the copositive relaxation in the case of nonconvex quadratic programs. We also present an algorithmic recipe for constructing instances of quadratic programs with a finite optimal value but an unbounded relaxation for a rather large family of convex relaxations including the doubly nonnegative relaxation.

Highlights

  • In this paper, we are interested in nonconvex quadratic programs that can be represented as follows:(Q P) ∗ = min q(x) s.t

  • We present an alternative perspective of feasibility preserving convex relaxations of (QP), based on the observation that each such relaxation implicitly gives rise to a convex underestimator of the objective function q(·) on S

  • If the objective function q(·) is convex over the feasible region S, we show that the convex underestimator arising from each feasibility preserving convex relaxation of (QP) agrees with q(·) over S

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Summary

Introduction

We are interested in nonconvex quadratic programs that can be represented as follows:. Despite the fact that the exactness of copositive relaxation has been established for more general classes of nonconvex optimization problems than quadratic programs, which is our focus in this paper, our perspective allows us to establish several properties of a very large class of convex relaxations in a unified manner for this smaller class of nonconvex optimization problems, and pinpoints the relations between the underlying structures of feasible solutions of convex relaxations and the behavior of the relaxations This perspective allows us to introduce the concept of feasibility preserving convex relaxations as well as induced convex underestimators and to study a fairly general class of convex relaxations of (QP) in this framework.

Notation
Preliminaries
Local minimizers
Convex cones of interest
Feasibility preserving convex relaxations
Role of convexity on feasibility preserving relaxations
Copositive relaxation and convex envelope
Bounded and unbounded feasible regions
Bounded feasible region
PP X PZ X ZP X ZZ
Unbounded feasible region
Concluding remarks
Full Text
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