2020
DOI: 10.1038/s41598-020-74015-x
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Rural–urban scaling of age, mortality, crime and property reveals a loss of expected self-similar behaviour

Abstract: The urban scaling hypothesis has improved our understanding of cities; however, rural areas have been neglected. We investigated rural–urban population density scaling in England and Wales using 67 indicators of crime, mortality, property, and age. Most indicators exhibited segmented scaling about a median critical density of 27 people per hectare. Above the critical density, urban regions preferentially attract young adults (25–40 years) and lose older people (> 45 years). Density scale adjusted metrics (D… Show more

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Cited by 6 publications
(9 citation statements)
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References 55 publications
(125 reference statements)
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“…This behaviour is consistent with the age demographics in England and Wales. Previous work has documented that populations dense regions serve and a magnet for young people while rural regions tend to have a greater proportion of elderly people [11]. The scaling exponents for death throughout are consistent with those seen for scaling of people 60 and above in England and Wales.…”
Section: Daily Exponent Variance and Skewness For Deathssupporting
confidence: 79%
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“…This behaviour is consistent with the age demographics in England and Wales. Previous work has documented that populations dense regions serve and a magnet for young people while rural regions tend to have a greater proportion of elderly people [11]. The scaling exponents for death throughout are consistent with those seen for scaling of people 60 and above in England and Wales.…”
Section: Daily Exponent Variance and Skewness For Deathssupporting
confidence: 79%
“…The data were analysed using the statistical software R version (3.6.2) [19] with the sf (0.9-1) [20], raster (3.0-12) [21], dplyr (0.8.5) [22], spData (0.3.5) [23], tmap (2.3-2) [24], ggplot2 (3.3.0) [25][26][27][28], xlsx (0.5.7) [29], gplots (3.0.4) [30] , httr (1.4.2) [31], plyr (1.8.5) [32], png (0.1-7) [33], rgdal (1. [5][6][7][8][9][10][11][12][13][14][15][16][17][18][19] [34], rgeos (0.5-5) [35], lubridate (1.7.9.2) [36], fitdistrplus (1.1-3) [37], fgarch (3042.83.2) [38] and glogis (1.0-1) [39] packages.…”
Section: Discussionmentioning
confidence: 99%
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“…More details on these three steps are available elsewhere ( 65 ). We also adjusted for the compositional effect of different age structures across cities, which have been shown to drive some scaling patterns ( 18 ) and which have a strong effect on mortality patterns. For this, we calculated the proportion of city residents aged 0 to 14, 15 to 39, 40 to 64, and 65 years and above, for the years of the study.…”
Section: Methodsmentioning
confidence: 99%
“…In some circumstances Eq 3 needs to be adjusted to account for a breakpoint to allow for a segmented fit. Empirically, the breakpoint, d *, for a range of indicators usually occurs in the range of 10–70 people per hectare [ 19 , 21 ]. Thus, Eq 3 can be adapted to allow for such fit and is given by Where β L and Y 0 are the exponent and pre-exponential factors below the breakpoint; β H and Y 1 are the exponent and pre-exponential factor above the breakpoint.…”
Section: Introductionmentioning
confidence: 99%