On the geometry of polytopes generated by heavy-tailed random vectors

Abstract

We study the geometry of centrally-symmetric random polytopes, generated by $N$ independent copies of a random vector $X$ taking values in ${\mathbb{R}^n}$. We show that under minimal assumptions on $X$, for $N \gtrsim n$ and with high probability, the polytope contains a deterministic set that is naturally associated with the random vector—namely, the polar of a certain floating body. This solves the long-standing question on whether such a random polytope contains a canonical body. Moreover, by identifying the floating bodies associated with various random vectors we recover the estimates that have been obtained previously, and thanks to the minimal assumptions on $X$ we derive estimates in cases that had been out of reach, in- volving random polytopes generated by heavy-tailed random vectors (e.g., when $X$ is $q$-stable or when $X$ has an unconditional structure). Finally, the structural results are used for the study of a fundamental question in compressive sensing—noise blind sparse recovery.

Publication
Communications in Contemporary Mathematics, 24(03), 2150056
Christian Kümmerle
Christian Kümmerle
Assistant Professor
School of Data, Mathematical, and Statistical Sciences
Department of Computer Science
Institute for Artificial Intelligence

I am passionate about the potential of AI and operations research for Lightning network operations and about efficiency gains within AI models that can be unlocked by combining smoothing, parsimony, structured optimization.