Title
Decompositions of Semidefinite Matrices and the Perspective Reformulation of Nonseparable Quadratic Programs
Abstract
We study the problem of decomposing the Hessian matrix of a mixed integer convex quadratic program (MICQP) into the sum of positive semidefinite 2 x 2 matrices. Solving this problem enables the use of perspective reformulation techniques for obtaining strong lower bounds for MICQPs with semicontinuous variables but a nonseparable objective function. An explicit formula is derived for constructing 2 x 2 decompositions when the underlying matrix is weakly scaled diagonally dominant, and necessary and sufficient conditions are given for the decomposition to be unique. For matrices lying outside this class, two exact semidefinite programming approaches and an efficient heuristic are developed for finding approximate decompositions. We present preliminary results on the bound strength of a 2 x 2 perspective reformulation for the portfolio optimization problem, showing that, for some classes of instances, the use of 2 x 2 matrices can significantly improve the quality of the bound with respect to the best previously known approach, although at a possibly high computational cost.
Year
DOI
Venue
2020
10.1287/moor.2018.0969
MATHEMATICS OF OPERATIONS RESEARCH
Keywords
Field
DocType
mixed-integer quadratic programming,matrix decomposition,scaled diagonal dominance,semicontinuous variables,portfolio optimization
Integer,Applied mathematics,Discrete mathematics,Matrix (mathematics),Positive-definite matrix,Matrix decomposition,Hessian matrix,Quadratic equation,Portfolio optimization,Quadratic programming,Mathematics
Journal
Volume
Issue
ISSN
45
1
0364-765X
Citations 
PageRank 
References 
0
0.34
0
Authors
3
Name
Order
Citations
PageRank
A. Frangioni11107.54
Claudio Gentile21166107.46
James Hungerford300.34