Arveson extreme points span free spectrahedra
Eric Evert, J. William Helton

TL;DR
This paper proves that real compact matrix convex sets defined by linear matrix inequalities are generated by their absolute extreme points, which are minimal and sufficient for reconstruction, and provides an algorithm for such decompositions.
Contribution
It establishes that absolute extreme points form a minimal generating set for these matrix convex sets and introduces an algorithm for their decomposition.
Findings
Every such set is the convex hull of its absolute extreme points.
Absolute extreme points are minimal generating elements.
An algorithm for expressing tuples as convex combinations of absolute extreme points is provided.
Abstract
Let denote -tuples of real symmetric matrices. Given tuples and , a matrix convex combination of and is a sum of the form \[ V_1^* XV_1+V_2^* Y V_2 \quad \quad \quad V_1^* V_1+V_2^* V_2=I_n \] where and are contractions. Matrix convex sets are sets which are closed under matrix convex combinations. A key feature of matrix convex combinations is that the -tuples , and do not need to have the same size. As a result, matrix convex sets are a dimension free analog of convex sets. While in the classical setting there is only one notion of an extreme point, there are three main notions of extreme points for matrix convex sets: ordinary,…
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