Matrix Extreme Points and Free extreme points of Free spectrahedra
Aidan Epperly, Eric Evert, J. William Helton, Igor Klep

TL;DR
This paper investigates the differences between matrix and free extreme points in free spectrahedra, providing theoretical examples, algorithms for construction and testing, and numerical evidence of their distinctions.
Contribution
It proves the existence of matrix extreme points that are not free extreme, and develops methods to construct and identify such points.
Findings
Matrix extreme points can differ from free extreme points.
For 2x2 matrices, matrix and free extreme points coincide.
Numerical methods can decompose points into free extreme points.
Abstract
A spectrahedron is a convex set defined by a linear matrix inequality, i.e., the set of all such that \[ L_A(x) = I + A_1 x_1 + A_2 x_2 + \dots + A_g x_g \succeq 0 \] for some symmetric matrices . This can be extended to matrix spaces by taking to be a tuple of real symmetric matrices of any size and using the Kronecker product The solution set of is called a \textit{free spectrahedron}. Free spectrahedra are important in systems engineering, operator algebras, and the theory of matrix convex sets. Matrix and free extreme points of free spectrahedra are of particular interest. While many authors have studied matrix and free extreme points of free spectrahedra, it has until now been unknown if these two types of extreme points are…
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Taxonomy
TopicsMatrix Theory and Algorithms · Advanced Optimization Algorithms Research · Point processes and geometric inequalities
