Dilations, Linear Matrix Inequalities, the Matrix Cube Problem and Beta Distributions
J. William Helton, Igor Klep, Scott A. McCullough, Markus Schweighofer

TL;DR
This paper establishes a sharp dilation result for symmetric matrices to commuting self-adjoint operators, deriving an analytic formula for the dilation factor that connects to probabilistic distributions and impacts linear matrix inequality theory.
Contribution
It provides a novel dilation theorem with a precise dilation factor for symmetric matrices, linking operator theory, LMIs, and probabilistic distributions.
Findings
Derived an explicit formula for the dilation factor $ heta(d)$.
Connected dilation results to new probabilistic insights for beta distributions.
Quantified the error in free spectrahedron relaxations of LMIs.
Abstract
An operator C on a Hilbert space H dilates to an operator T on a Hilbert space K if there is an isometry V from H to K such that C=V^*TV. A main result of this paper is, for a positive integer d, the simultaneous dilation, up to a sharp factor , of all d-by-d symmetric matrices of operator norm at most one to a collection of commuting self-adjoint contraction operators on a Hilbert space. An analytic formula for is derived, which as a by-product gives new probabilistic results for the binomial and beta distributions. Dilating to commuting operators has consequences for the theory of linear matrix inequalities (LMIs). Given a tuple A=(A_1,...,A_g) of symmetric matrices of the same size, L(x):=I-\sum A_j x_j is a monic linear pencil. The solution set S_L of the corresponding linear matrix inequality, consisting of those x in R^g for which L(x) is positive…
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