A Christoffel-like function for high-dimensional support inference in graphical models
Abstract
Christoffel polynomials are classical tools from approximation theory. They can be used to estimate the (compact) support of a measure on based on its low-degree moments. Recently, they have been applied to problems in data science, including outlier detection and support inference. A major downside of Christoffel polynomials in such applications is the fact that, in order to compute their coefficients, one must invert a moment matrix whose size grows rapidly with the dimension . In this paper, we propose a modification of the Christoffel polynomial which is significantly cheaper to compute, but retains many of its desirable properties. In particular, it (1) exhibits a so-called support dichotomy and (2) it is a rational function, whose numerator and denominator factor into `lower-dimensional' Christoffel polynomials whose coefficients can be computed by inverting potentially much smaller moment matrices. Our approach relies on sparsity of the underlying measure , described by a graphical model. The complexity of our modification depends on the treewidth of this model.
Cite
@article{arxiv.2409.15965,
title = {A Christoffel-like function for high-dimensional support inference in graphical models},
author = {Jean-Bernard Lasserre and Lucas Slot},
journal= {arXiv preprint arXiv:2409.15965},
year = {2026}
}
Comments
Implemented referee comments. Added a missing assumption to the statement of Corollary 4.11