Natural spatial pattern—When mutual socio-geo distances between cities follow Benford’s law

Benford’s law states that the first digits of numbers in any natural dataset appear with defined frequencies. Pioneering, we use Benford distribution to analyse the geo-location of cities and their population in the majority of countries. We use distances in three dimensions: 1D between the populati...

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Main Authors: Katarzyna Kopczewska, Tomasz Kopczewski
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2022-01-01
Series:PLoS ONE
Online Access:https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9584388/?tool=EBI
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author Katarzyna Kopczewska
Tomasz Kopczewski
author_facet Katarzyna Kopczewska
Tomasz Kopczewski
author_sort Katarzyna Kopczewska
collection DOAJ
description Benford’s law states that the first digits of numbers in any natural dataset appear with defined frequencies. Pioneering, we use Benford distribution to analyse the geo-location of cities and their population in the majority of countries. We use distances in three dimensions: 1D between the population values, 2D between the cities, based on geo-coordinates of location, 3D between cities’ location and population, which jointly reflects separation and mass of urban locations. We get four main findings. Firstly, we empirically show that mutual 3D socio-geo distances between cities and populations in most countries conform with Benford’s law, and thus the urban geo-locations have natural spatial distribution. Secondly, we show empirically that the population of cities within countries follows the composition of gamma (1,1) distributions and that 1D distance between populations also conforms to Benford’s law. Thirdly, we pioneer in replicating spatial natural distribution–we discover in simulation that a mixture of three pure point-patterns: clustered, ordered and random in proportions 15:3:2 makes the 2D spatial distribution Benford-like. Complex 3D Benford-like patterns can be built upon 2D (spatial) Benford distribution and gamma (1,1) distribution of cities’ sizes. This finding enables generating 2D and 3D Benford distributions, which may replicate well the urban settlement. Fourth, we use historical settlement analysis to claim that the geo-location of cities and inhabitants worldwide followed the evolutionary process, resulting in natural Benford-like spatial distribution and to justify our statistical findings. Those results are very novel. This study develops new spatial distribution to simulate natural locations. It shows that evolutionary settlement patterns resulted in the natural location of cities, and historical distortions in urbanisation, even if persistent till now, are being evolutionary corrected.
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spelling doaj.art-e6985b58be134d81b301b9574deb15432022-12-22T02:37:17ZengPublic Library of Science (PLoS)PLoS ONE1932-62032022-01-011710Natural spatial pattern—When mutual socio-geo distances between cities follow Benford’s lawKatarzyna KopczewskaTomasz KopczewskiBenford’s law states that the first digits of numbers in any natural dataset appear with defined frequencies. Pioneering, we use Benford distribution to analyse the geo-location of cities and their population in the majority of countries. We use distances in three dimensions: 1D between the population values, 2D between the cities, based on geo-coordinates of location, 3D between cities’ location and population, which jointly reflects separation and mass of urban locations. We get four main findings. Firstly, we empirically show that mutual 3D socio-geo distances between cities and populations in most countries conform with Benford’s law, and thus the urban geo-locations have natural spatial distribution. Secondly, we show empirically that the population of cities within countries follows the composition of gamma (1,1) distributions and that 1D distance between populations also conforms to Benford’s law. Thirdly, we pioneer in replicating spatial natural distribution–we discover in simulation that a mixture of three pure point-patterns: clustered, ordered and random in proportions 15:3:2 makes the 2D spatial distribution Benford-like. Complex 3D Benford-like patterns can be built upon 2D (spatial) Benford distribution and gamma (1,1) distribution of cities’ sizes. This finding enables generating 2D and 3D Benford distributions, which may replicate well the urban settlement. Fourth, we use historical settlement analysis to claim that the geo-location of cities and inhabitants worldwide followed the evolutionary process, resulting in natural Benford-like spatial distribution and to justify our statistical findings. Those results are very novel. This study develops new spatial distribution to simulate natural locations. It shows that evolutionary settlement patterns resulted in the natural location of cities, and historical distortions in urbanisation, even if persistent till now, are being evolutionary corrected.https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9584388/?tool=EBI
spellingShingle Katarzyna Kopczewska
Tomasz Kopczewski
Natural spatial pattern—When mutual socio-geo distances between cities follow Benford’s law
PLoS ONE
title Natural spatial pattern—When mutual socio-geo distances between cities follow Benford’s law
title_full Natural spatial pattern—When mutual socio-geo distances between cities follow Benford’s law
title_fullStr Natural spatial pattern—When mutual socio-geo distances between cities follow Benford’s law
title_full_unstemmed Natural spatial pattern—When mutual socio-geo distances between cities follow Benford’s law
title_short Natural spatial pattern—When mutual socio-geo distances between cities follow Benford’s law
title_sort natural spatial pattern when mutual socio geo distances between cities follow benford s law
url https://www.ncbi.nlm.nih.gov/pmc/articles/PMC9584388/?tool=EBI
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