Separations of Matroid Freeness Properties
Arnab Bhattacharyya, Elena Grigorescu, Jakob Nordstr\"om and, Ning Xie

TL;DR
This paper investigates the semantic distinctions among matroid freeness properties, introduces a method to compare them, and constructs hierarchies demonstrating their complexity and testability in property testing.
Contribution
It develops a new method for analyzing the relations between matroid freeness properties and introduces matroid homomorphisms, advancing understanding of their semantic structure.
Findings
Established a dichotomy for certain subclasses of matroid freeness properties
Constructed infinite hierarchies with functions far from lower levels
Introduced matroid homomorphisms as a new analytical tool
Abstract
Properties of Boolean functions on the hypercube invariant with respect to linear transformations of the domain are among the most well-studied properties in the context of property testing. In this paper, we study the fundamental class of linear-invariant properties called matroid freeness properties. These properties have been conjectured to essentially coincide with all testable linear-invariant properties, and a recent sequence of works has established testability for increasingly larger subclasses. One question left open, however, is whether the infinitely many syntactically different properties recently shown testable in fact correspond to new, semantically distinct ones. This is a crucial issue since it has also been shown that there exist subclasses of these properties for which an infinite set of syntactically different representations collapse into one of a small, finite set…
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Taxonomy
TopicsComplexity and Algorithms in Graphs · Formal Methods in Verification · Machine Learning and Algorithms
