Characterization of Positive Definite and Semidefinite Matrices via Quadratic Programming Duality.

Abstract

Positive definite and semidefinite matrices induce well known duality results in quadratic programming. The converse is established here. Thus if certain duality results hold for a pair of dual quadratic programs, then the underlying matrix must be positive definite or semidefinite. For example if a strict local minimum of a quadratic program exceeds or equals a strict global maximum of the dual, then the underlying symmetric matrix omega is positive definite. If a quadratic program has a local minimum then the underlying matrix omega is positive semidefinite if and only if the primal minimum exceeds or equals the dual global maximum and X(T) omega x = O implies omega x = O. A significant implication of these results is that the Wolfe dual may not be meaningful for nonconvex quadratic programs and for nonlinear programs without locally positive definite or semidefinite Hessians, even if the primal second order sufficient optimally conditions are satisfied. (Author)

Open PDF

Document Details

Document Type
Technical Report
Publication Date
May 01, 1982
Accession Number
ADA116203

Entities

People

  • Olvi L. Mangasarian
  • S.-p. Han

Organizations

  • University of Wisconsin–Madison

Tags

DTIC Thesaurus Topics

  • Computer Programming
  • Continents
  • Geographic Regions
  • Inequalities
  • Mathematics
  • Military Research
  • North America
  • North Carolina
  • Quadratic Programming
  • Theorems
  • United States
  • Wisconsin

Fields of Study

  • Mathematics

Readers

  • Approximation Theory.
  • Operations Research