Inhomogeneous mark correlation functions for general marked point processes
Mehdi Moradi, Matthias Eckardt

TL;DR
This paper introduces inhomogeneous mark correlation functions for spatial point processes, enabling better analysis of mark associations in unevenly distributed environmental and biological data.
Contribution
It develops nonparametric estimators for inhomogeneous mark correlation functions and demonstrates their effectiveness through simulations and real-world forest data applications.
Findings
Traditional methods fail under spatial inhomogeneity
Estimators accurately detect mark association strength and range
Application reveals detailed growth patterns in forests
Abstract
Spatial phenomena in environmental and biological contexts often involve events that are unevenly distributed across space and carry attributes, whose associations/variations are space-dependent. In this paper, we introduce the class of inhomogeneous mark correlation functions, capturing mark associations/variations, while explicitly accounting for the spatial inhomogeneity of events. The proposed functions are designed to quantify how, on average, marks vary or associate with one another as a function of pairwise spatial distances. We develop nonparametric estimators and evaluate their performance through simulation studies covering a range of scenarios with mark association or variation, spanning from nonstationary point patterns without spatial interaction to those characterised by clustering tendencies. Our simulations reveal the shortcomings of traditional methods in the presence…
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Taxonomy
TopicsMorphological variations and asymmetry · Point processes and geometric inequalities · Collagen: Extraction and Characterization
