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Bibliographic Details
Main Authors: Angulo, Jose M., Esquivel, Francisco J., Madrid, Ana E., Alonso, Francisco J.
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2411.16871
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author Angulo, Jose M.
Esquivel, Francisco J.
Madrid, Ana E.
Alonso, Francisco J.
author_facet Angulo, Jose M.
Esquivel, Francisco J.
Madrid, Ana E.
Alonso, Francisco J.
contents Information Theory provides a fundamental basis for analysis, and for a variety of subsequent methodological approaches, in relation to uncertainty quantification. The transversal character of concepts and derived results justifies its omnipresence in scientific research, in almost every area of knowledge, particularly in Physics, Communications, Geosciences, Life Sciences, etc. Information-theoretic aspects underlie modern developments on complexity and risk. A proper use and exploitation of structural characteristics inherent to spatial data motivates, according to the purpose, special considerations in this context. In this paper, some of the most relevant approaches introduced, in particular recent contributions and directions, regarding the informational analysis of spatial data and related aspects concerning complexity analysis, are reviewed under a conceptually connective evolutionary perspective. The discussion involves the cases of spatial data from magnitude measurements and spatial point patterns, with the latter possibly being of a multifractal nature.
format Preprint
id arxiv_https___arxiv_org_abs_2411_16871
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Information and Complexity Analysis of Spatial Data
Angulo, Jose M.
Esquivel, Francisco J.
Madrid, Ana E.
Alonso, Francisco J.
Statistics Theory
Information Theory provides a fundamental basis for analysis, and for a variety of subsequent methodological approaches, in relation to uncertainty quantification. The transversal character of concepts and derived results justifies its omnipresence in scientific research, in almost every area of knowledge, particularly in Physics, Communications, Geosciences, Life Sciences, etc. Information-theoretic aspects underlie modern developments on complexity and risk. A proper use and exploitation of structural characteristics inherent to spatial data motivates, according to the purpose, special considerations in this context. In this paper, some of the most relevant approaches introduced, in particular recent contributions and directions, regarding the informational analysis of spatial data and related aspects concerning complexity analysis, are reviewed under a conceptually connective evolutionary perspective. The discussion involves the cases of spatial data from magnitude measurements and spatial point patterns, with the latter possibly being of a multifractal nature.
title Information and Complexity Analysis of Spatial Data
topic Statistics Theory
url https://arxiv.org/abs/2411.16871