Spatial association from the perspective of mutual information
Spatial association from the perspective of mutual information
Measures of spatial association are important to reveal the spatial structures and patterns in geographical phenomena. They have utility for spatial interpolation, stochastic simulation, and causal inference, among others. Such measures are abundantly available for continuous spatial variables, whereas for categorical spatial variables they are less well developed. In this research, we developed a measure of spatial association for categorical spatial variables coined the entropogram, quantifying its spatial association using mutual information. Mutual information concerns information shared by pairs of random variables at different locations as revealed by their observed joint frequency distribution and marginal frequency distributions. The developed new measure is modeled as a function of lag in analogy to the variogram. Whereas existing measures focus mainly on interstate relationships, the entropogram models the spatial correlation in categorical spatial variables holistically. In this way, the entropogram imparts multiple advantages, for example, simplifying the representation of spatial structure for categorical variables and facilitating communication. The entropogram also reflects variation in the spatial correlation between different states. We first explored the properties of the entropogram in a simulation study. Then, we applied the entropogram to analyze the spatial association of land cover types in Qinxian, Shanxi, China. We conclude that the entropogram provides a suitable addition to existing measures of spatial association for applications in a wide range of disciplines where the categorical spatial variable is of interest.
Zhang, Wen-Bin
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Ge, Yong
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Bai, Hexiang
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Jin, Yan
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Stein, Alfred
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Atkinson, Peter M.
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14 September 2023
Zhang, Wen-Bin
a4ab325c-e9cb-4369-959b-25a3320bb4e3
Ge, Yong
f22fa40c-9a6a-456c-bdad-b322c3fd24ee
Bai, Hexiang
c61ace72-56f4-48f8-a8d6-ac8f39ccb5a7
Jin, Yan
a7212b49-fcf8-49db-8231-6bea6c7a631c
Stein, Alfred
0cb8bdd2-df53-48f9-b8a0-3d7fbd5e8e60
Atkinson, Peter M.
7e59bdcd-60d7-401d-9699-3973cf4e8cc8
Zhang, Wen-Bin, Ge, Yong, Bai, Hexiang, Jin, Yan, Stein, Alfred and Atkinson, Peter M.
(2023)
Spatial association from the perspective of mutual information.
Annals of the American Association of Geographers, 113 (8).
(doi:10.1080/24694452.2023.2209629).
Abstract
Measures of spatial association are important to reveal the spatial structures and patterns in geographical phenomena. They have utility for spatial interpolation, stochastic simulation, and causal inference, among others. Such measures are abundantly available for continuous spatial variables, whereas for categorical spatial variables they are less well developed. In this research, we developed a measure of spatial association for categorical spatial variables coined the entropogram, quantifying its spatial association using mutual information. Mutual information concerns information shared by pairs of random variables at different locations as revealed by their observed joint frequency distribution and marginal frequency distributions. The developed new measure is modeled as a function of lag in analogy to the variogram. Whereas existing measures focus mainly on interstate relationships, the entropogram models the spatial correlation in categorical spatial variables holistically. In this way, the entropogram imparts multiple advantages, for example, simplifying the representation of spatial structure for categorical variables and facilitating communication. The entropogram also reflects variation in the spatial correlation between different states. We first explored the properties of the entropogram in a simulation study. Then, we applied the entropogram to analyze the spatial association of land cover types in Qinxian, Shanxi, China. We conclude that the entropogram provides a suitable addition to existing measures of spatial association for applications in a wide range of disciplines where the categorical spatial variable is of interest.
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Accepted/In Press date: 21 April 2023
e-pub ahead of print date: 16 June 2023
Published date: 14 September 2023
Identifiers
Local EPrints ID: 490604
URI: http://eprints.soton.ac.uk/id/eprint/490604
ISSN: 2469-4460
PURE UUID: abcf0414-ccac-45a0-9aaf-da6670090e3b
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Date deposited: 31 May 2024 16:33
Last modified: 16 Jun 2024 04:01
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Contributors
Author:
Wen-Bin Zhang
Author:
Yong Ge
Author:
Hexiang Bai
Author:
Yan Jin
Author:
Alfred Stein
Author:
Peter M. Atkinson
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