Testing Thresholds and Spectral Properties of High-Dimensional Random Toroidal Graphs via Edgeworth-Style Expansions
Samuel Baguley, Andreas G\"obel, Marcus Pappik, Leon Schiller

TL;DR
This paper introduces a novel technique using Edgeworth expansions to analyze high-dimensional random toroidal graphs under various L_q norms, providing tight bounds for distinguishing them from Erdős–Rényi graphs and characterizing their spectral properties.
Contribution
It develops a new method based on Edgeworth expansions to quantify edge dependence, enabling tight bounds for distinguishing toroidal RGGs from ER graphs under general L_q distances.
Findings
Signed triangles can distinguish RGGs from ER graphs when d n^3 p^3.
Distributions converge when d = n^3 p^2 / .
Spectral properties are tightly characterized for all L_q distances.
Abstract
We study high-dimensional random geometric graphs (RGGs) of edge-density with vertices uniformly distributed on the -dimensional torus and edges inserted between sufficiently close vertices with respect to an -norm. We focus on distinguishing an RGG from an Erd\H{o}s--R\'enyi (ER) graph if both models have edge probability . So far, most results considered either spherical RGGs with -distance or toroidal RGGs under -distance. However, for general -distances, many questions remain open, especially if is allowed to depend on . The main reason for this is that RGGs under -distances can not easily be represented as the logical AND of their 1-dimensional counterparts, as for geometries. To overcome this, we devise a novel technique for quantifying the dependence between edges based on modified Edgeworth expansions. Our technique…
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Taxonomy
TopicsData Management and Algorithms · Computational Geometry and Mesh Generation · Stochastic processes and statistical mechanics
