Minimum-Support Solutions of Polyhedral Concave Programs

Loading...
Thumbnail Image

Date

Authors

Mangasarian, O.L.

Advisors

License

DOI

Type

Technical Report

Journal Title

Journal ISSN

Volume Title

Publisher

Grantor

Abstract

Motivated by the successful application of mathematical programming techniques to difficult machine learning problems, we seek solutions of concave minimization problems over polyhedral sets with a minimum number of nonzero components.We prove that if such problems have a solution, they have a vertex solution with a minimal number of zeros. This includes linear programs and general linear complementarity problems. A smooth concave exponential approximation to a step function solves the minimum-support problem exactly for a finite value of the smoothing parameter. A fast finite linear-programming-based iterative method terminates at a stationary point, which for many important real world problems provides very useful answers. Utilizing the complementarity property of linear programs and linear complementarity problems, an upper bound on the number of nonzeros can be obtained by solving a single convex minimization problem on a polyhedral set.

Description

Keywords

Related Material and Data

Citation

97-05

Sponsorship

Endorsement

Review

Supplemented By

Referenced By