Preserving positivity for matrices with sparsity constraints
Dominique Guillot, Apoorva Khare, and Bala Rajaratnam

TL;DR
This paper extends the characterization of functions that preserve matrix positivity to sparse matrices with zeros dictated by graphs, showing that such functions need not be analytic or absolutely monotonic, especially for trees.
Contribution
It provides the first characterization of positivity-preserving functions for matrices with zeros according to non-complete graphs, specifically trees, and explores conditions under which absolute monotonicity is necessary.
Findings
Functions preserving positivity on sparse matrices can be non-analytic.
For trees, such functions are multiplicatively midpoint-convex and super-additive.
Analytic functions can have arbitrarily long negative coefficient sequences.
Abstract
Functions preserving Loewner positivity when applied entrywise to positive semidefinite matrices have been widely studied in the literature. Following the work of Schoenberg [Duke Math. J. 9], Rudin [Duke Math. J. 26], and others, it is well-known that functions preserving positivity for matrices of all dimensions are absolutely monotonic (i.e., analytic with nonnegative Taylor coefficients). In this paper, we study functions preserving positivity when applied entrywise to sparse matrices, with zeros encoded by a graph or a family of graphs . Our results generalize Schoenberg and Rudin's results to a modern setting, where functions are often applied entrywise to sparse matrices in order to improve their properties (e.g. better conditioning). The only such result known in the literature is for the complete graph . We provide the first such characterization result for a…
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