Article ID Journal Published Year Pages File Type
4603524 Linear Algebra and its Applications 2007 25 Pages PDF
Abstract

Geometric optimisation algorithms are developed that efficiently find the nearest low-rank correlation matrix. We show, in numerical tests, that our methods compare favourably with the existing methods in the literature. The connection with the Lagrange multiplier method is established, along with an identification of whether a local minimum is a global minimum. An additional benefit of the geometric approach is that any weighted norm can be applied. The problem of finding the nearest low-rank correlation matrix occurs as part of the calibration of multi-factor interest rate market models to correlation.

Related Topics
Physical Sciences and Engineering Mathematics Algebra and Number Theory