Scaling geospatial data from the perspective of complexity: exploring the scaling behavior of the entropogram
Scaling geospatial data from the perspective of complexity: exploring the scaling behavior of the entropogram
A fundamental challenge in geospatial data science is to determine how a property, or its characterization, changes with a change in the scale of measurement. Except for geostatistical regularization of the variogram, which is theoretically well established, the scaling behaviors of a wide range of alternative measures of spatial association remain unclear. This limits the ability to make inferences at scales beyond the scale of measurement. The scaling behavior of the recently introduced entropogram function also remains unclear. Because the entropogram is essentially the generalization of the variogram to categorical spatial variables, the possibility to derive a scaling model for the entropogram exists. Here, the scaling behavior of the entropogram based on the scale effect of Shannon entropy is derived, providing a theoretical basis for the regularization of the entropogram. To validate the developed regularization model for the entropogram, a series of multiscale data was generated. Both theoretical derivation and experimental results showed that the entropogram is scale-invariant, under certain conditions for the generation of the categorical data. This research, thus, generalizes the entropogram to changes in measurement scale, thereby increasing our ability to characterize spatial data and make inferences about the underlying dynamic process. It also provides a reference for the interactions between patterns and processes at different scales.
entropogram, geospatial data, scale effect, spatial association
Zhang, Wen-Bin
a4ab325c-e9cb-4369-959b-25a3320bb4e3
Ge, Yong
f22fa40c-9a6a-456c-bdad-b322c3fd24ee
Lai, Shengjie
b57a5fe8-cfb6-4fa7-b414-a98bb891b001
Atkinson, Peter M.
985bc8d3-e826-4e02-8060-8388183eb697
Zhang, Wen-Bin
a4ab325c-e9cb-4369-959b-25a3320bb4e3
Ge, Yong
f22fa40c-9a6a-456c-bdad-b322c3fd24ee
Lai, Shengjie
b57a5fe8-cfb6-4fa7-b414-a98bb891b001
Atkinson, Peter M.
985bc8d3-e826-4e02-8060-8388183eb697
Zhang, Wen-Bin, Ge, Yong, Lai, Shengjie and Atkinson, Peter M.
(2024)
Scaling geospatial data from the perspective of complexity: exploring the scaling behavior of the entropogram.
Annals of the American Association of Geographers.
(doi:10.1080/24694452.2024.2377227).
Abstract
A fundamental challenge in geospatial data science is to determine how a property, or its characterization, changes with a change in the scale of measurement. Except for geostatistical regularization of the variogram, which is theoretically well established, the scaling behaviors of a wide range of alternative measures of spatial association remain unclear. This limits the ability to make inferences at scales beyond the scale of measurement. The scaling behavior of the recently introduced entropogram function also remains unclear. Because the entropogram is essentially the generalization of the variogram to categorical spatial variables, the possibility to derive a scaling model for the entropogram exists. Here, the scaling behavior of the entropogram based on the scale effect of Shannon entropy is derived, providing a theoretical basis for the regularization of the entropogram. To validate the developed regularization model for the entropogram, a series of multiscale data was generated. Both theoretical derivation and experimental results showed that the entropogram is scale-invariant, under certain conditions for the generation of the categorical data. This research, thus, generalizes the entropogram to changes in measurement scale, thereby increasing our ability to characterize spatial data and make inferences about the underlying dynamic process. It also provides a reference for the interactions between patterns and processes at different scales.
Text
manuscript
- Accepted Manuscript
Restricted to Repository staff only until 13 August 2025.
Request a copy
More information
Submitted date: 3 February 2024
Accepted/In Press date: 4 June 2024
e-pub ahead of print date: 13 August 2024
Keywords:
entropogram, geospatial data, scale effect, spatial association
Identifiers
Local EPrints ID: 493732
URI: http://eprints.soton.ac.uk/id/eprint/493732
ISSN: 2469-4460
PURE UUID: 5d3b0770-4059-4413-a6b2-783e82cea2d2
Catalogue record
Date deposited: 11 Sep 2024 17:25
Last modified: 12 Sep 2024 02:09
Export record
Altmetrics
Contributors
Author:
Wen-Bin Zhang
Author:
Yong Ge
Author:
Peter M. Atkinson
Download statistics
Downloads from ePrints over the past year. Other digital versions may also be available to download e.g. from the publisher's website.
View more statistics