Directionally Convex Ordering of Random Measures, Shot Noise Fields and Some Applications to Wireless Communications
Bartlomiej Blaszczyszyn (INRIA Rocquencourt), D. Yogeshwaran (INRIA, Rocquencourt)

TL;DR
This paper develops the theory of directionally convex ($dcx$) ordering for random measures and fields, demonstrating how it influences clustering, second moment properties, and applications to wireless network performance.
Contribution
It extends $dcx$ ordering to random measures on locally compact spaces and explores its preservation under various operations, with applications to Cox processes and wireless communications.
Findings
$dcx$ order relates to clustering and dependence in point processes.
$dcx$ order is preserved under certain operations like displacement and superposition.
Shot-noise fields inherit $dcx$ order, impacting wireless network analysis.
Abstract
Directionally convex () ordering is a tool for comparison of dependence structure of random vectors that also takes into account the variability of the marginal distributions. When extended to random fields it concerns comparison of all finite dimensional distributions. Viewing locally finite measures as non-negative fields of measure-values indexed by the bounded Borel subsets of the space, in this paper we formulate and study the ordering of random measures on locally compact spaces. We show that the order is preserved under some of the natural operations considered on random measures and point processes, such as deterministic displacement of points, independent superposition and thinning as well as independent, identically distributed marking. Further operations such as position dependent marking and displacement of points though do not preserve the order on…
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