A framework for analysing point patterns on nonconvex domains using visibility graphs and multidimensional scaling

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Authors

Mahloromela, Kabelo
Fabris-Rotelli, Inger Nicolette

Journal Title

Journal ISSN

Volume Title

Publisher

Elsevier

Abstract

A point pattern is typically analysed to understand the first- and second-order properties of the underlying point process. These properties are usually inferred using estimation procedures that depend on interpoint distance and are thus sensitive to the choice of distance metric. Euclidean distance is conventionally used to quantify proximity between points, but it does not accurately reflect spatial relationships when points are constrained within irregular, nonconvex spatial domains. Herein, we propose a strategy to embed visibility graph distances into Euclidean metric space using multidimensional scaling. The aim is to simplify analyses, leverage well-developed methods based on Euclidean distance, and retain, as far as possible, the true proximity relationships on a nonconvex spatial domain. The kernel smoothed intensity estimate and the K-function are computed in this new spatial context and used to validate the effectiveness of the embedding strategy.

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Keywords

Point pattern, Nonconvex window domain, Euclidean distance, Visibility graph, Multidimensional scaling

Sustainable Development Goals

None

Citation

Mahloromela, K. & Fabris-Rotelli, I. 2025, 'A framework for analysing point patterns on nonconvex domains using visibility graphs and multidimensional scaling', Spatial Statistics, vol. 70, art. 100935, pp. 1-20. https://doi.org/10.1016/j.spasta.2025.100935.