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<front>
<journal-meta>
<journal-id journal-id-type="publisher-id">Front. Phys.</journal-id>
<journal-title>Frontiers in Physics</journal-title>
<abbrev-journal-title abbrev-type="pubmed">Front. Phys.</abbrev-journal-title>
<issn pub-type="epub">2296-424X</issn>
<publisher>
<publisher-name>Frontiers Media S.A.</publisher-name>
</publisher>
</journal-meta>
<article-meta>
<article-id pub-id-type="publisher-id">858307</article-id>
<article-id pub-id-type="doi">10.3389/fphy.2022.858307</article-id>
<article-categories>
<subj-group subj-group-type="heading">
<subject>Physics</subject>
<subj-group>
<subject>Original Research</subject>
</subj-group>
</subj-group>
</article-categories>
<title-group>
<article-title>Scaling Beyond Cities</article-title>
<alt-title alt-title-type="left-running-head">Prieto Curiel et al.</alt-title>
<alt-title alt-title-type="right-running-head">Scaling Beyond Cities</alt-title>
</title-group>
<contrib-group>
<contrib contrib-type="author">
<name>
<surname>Prieto Curiel</surname>
<given-names>Rafael</given-names>
</name>
<xref ref-type="aff" rid="aff1">
<sup>1</sup>
</xref>
<xref ref-type="aff" rid="aff2">
<sup>2</sup>
</xref>
<uri xlink:href="https://loop.frontiersin.org/people/1621507/overview"/>
</contrib>
<contrib contrib-type="author" corresp="yes">
<name>
<surname>Cabrera-Arnau</surname>
<given-names>Carmen</given-names>
</name>
<xref ref-type="aff" rid="aff2">
<sup>2</sup>
</xref>
<xref ref-type="corresp" rid="c001">&#x2a;</xref>
<uri xlink:href="https://loop.frontiersin.org/people/1643092/overview"/>
</contrib>
<contrib contrib-type="author">
<name>
<surname>Bishop</surname>
<given-names>Steven Richard</given-names>
</name>
<xref ref-type="aff" rid="aff3">
<sup>3</sup>
</xref>
</contrib>
</contrib-group>
<aff id="aff1">
<sup>1</sup>
<institution>Research in Spatial Economics (RiSE) Group</institution>, <institution>Department of Mathematical Sciences</institution>, <institution>Universidad EAFIT</institution>, <addr-line>Medell&#xed;n</addr-line>, <country>Colombia</country>
</aff>
<aff id="aff2">
<sup>2</sup>
<institution>Centre for Advanced Spatial Analysis</institution>, <institution>University College London</institution>, <addr-line>London</addr-line>, <country>United Kingdom</country>
</aff>
<aff id="aff3">
<sup>3</sup>
<institution>Department of Mathematics</institution>, <institution>University College London</institution>, <addr-line>London</addr-line>, <country>United Kingdom</country>
</aff>
<author-notes>
<fn fn-type="edited-by">
<p>
<bold>Edited by:</bold> <ext-link ext-link-type="uri" xlink:href="https://loop.frontiersin.org/people/72779/overview">Haroldo V. Ribeiro</ext-link>, State University of Maring&#xe1;, Brazil</p>
</fn>
<fn fn-type="edited-by">
<p>
<bold>Reviewed by:</bold> <ext-link ext-link-type="uri" xlink:href="https://loop.frontiersin.org/people/1053296/overview">Hygor Piaget Monteiro Melo</ext-link>, University of Lisbon, Portugal</p>
<p>
<ext-link ext-link-type="uri" xlink:href="https://loop.frontiersin.org/people/1650078/overview">Erneson Oliveira</ext-link>, University of Fortaleza, Brazil</p>
</fn>
<corresp id="c001">&#x2a;Correspondence: Carmen Cabrera-Arnau, <email>c.cabrera-arnau@ucl.ac.uk</email>
</corresp>
<fn fn-type="other">
<p>This article was submitted to Social Physics, a section of the journal Frontiers in Physics</p>
</fn>
</author-notes>
<pub-date pub-type="epub">
<day>05</day>
<month>04</month>
<year>2022</year>
</pub-date>
<pub-date pub-type="collection">
<year>2022</year>
</pub-date>
<volume>10</volume>
<elocation-id>858307</elocation-id>
<history>
<date date-type="received">
<day>19</day>
<month>01</month>
<year>2022</year>
</date>
<date date-type="accepted">
<day>28</day>
<month>02</month>
<year>2022</year>
</date>
</history>
<permissions>
<copyright-statement>Copyright &#xa9; 2022 Prieto Curiel, Cabrera-Arnau and Bishop.</copyright-statement>
<copyright-year>2022</copyright-year>
<copyright-holder>Prieto Curiel, Cabrera-Arnau and Bishop</copyright-holder>
<license xlink:href="http://creativecommons.org/licenses/by/4.0/">
<p>This is an open-access article distributed under the terms of the Creative Commons Attribution License (CC BY). The use, distribution or reproduction in other forums is permitted, provided the original author(s) and the copyright owner(s) are credited and that the original publication in this journal is cited, in accordance with accepted academic practice. No use, distribution or reproduction is permitted which does not comply with these terms.</p>
</license>
</permissions>
<abstract>
<p>City population size is a crucial measure when trying to understand urban life. Many socio-economic indicators scale superlinearly with city size, whilst some infrastructure indicators scale sublinearly with city size. However, the impact of size also extends beyond the city&#x2019;s limits. Here, we analyse the scaling behaviour of cities beyond their boundaries by considering the emergence and growth of nearby cities. Based on an urban network from African continental cities, we construct an algorithm to create the region of influence of cities. The number of cities and the population within a region of influence are then analysed in the context of urban scaling. Our results are compared against a random permutation of the network, showing that the observed scaling power of cities to enhance the emergence and growth of cities is not the result of randomness. By altering the radius of influence of cities, we observe three regimes. Large cities tend to be surrounded by many small towns for small distances. For medium distances (above 114&#xa0;km), large cities are surrounded by many other cities containing large populations. Large cities boost urban emergence and growth (even more than 190&#xa0;km away), but their scaling power decays with distance.</p>
</abstract>
<kwd-group>
<kwd>scaling</kwd>
<kwd>urban network</kwd>
<kwd>Africa</kwd>
<kwd>city size</kwd>
<kwd>emergence</kwd>
<kwd>growth</kwd>
</kwd-group>
</article-meta>
</front>
<body>
<sec id="s1">
<title>1 Introduction</title>
<p>The world&#x2019;s urban population has undergone rapid growth in recent decades, and this trend shows no signs of ceasing [<xref ref-type="bibr" rid="B1">1</xref>]. By 2021, 56.2% of the world&#x2019;s population lived in urban areas. Furthermore, in the last 10&#xa0;years, the world&#x2019;s population has increased by nearly 840 million inhabitants, but almost 95% of that growth occurred in cities. Thus, the world is already mostly urban and will become more urbanised in the coming decades. That said, the proportion of urban population is not uniformly spread across all regions, with variations being as much as 82.6% in North America or 74.9% in Europe, but only 43.5% in Africa. The percentage of the urban population is predicted to keep growing up to 68% by 2050, but this increase will not be uniformly distributed. It is anticipated that 90% of the projected growth will be concentrated in just a few countries from Asia and Africa, with China, India and Nigeria accounting for 35% of the total growth [<xref ref-type="bibr" rid="B2">2</xref>].</p>
<p>The shift to a society of urban dwellers will result in profound but still poorly understood changes. On the one hand, urbanisation could lead to adverse changes [<xref ref-type="bibr" rid="B3">3</xref>&#x2013;<xref ref-type="bibr" rid="B5">5</xref>] such as loss of biodiversity, land-cover change, social disparity and deterioration of public health. On the other hand, urbanisation has positive consequences since urban agglomeration may result in increased productivity from firms [<xref ref-type="bibr" rid="B6">6</xref>], urban wage premium [<xref ref-type="bibr" rid="B7">7</xref>], improved access to healthcare [<xref ref-type="bibr" rid="B8">8</xref>] and higher concentration of highly-qualified individuals [<xref ref-type="bibr" rid="B9">9</xref>]. Yet, the effect of these changes will likely not be limited to each of the growing cities [<xref ref-type="bibr" rid="B10">10</xref>]. Instead, it will likely spread to an area influenced by that city, which might range from just the surrounding territories in the case of smaller urban settlements, to a regional or continental level, in the case of global metropolises [<xref ref-type="bibr" rid="B11">11</xref>, <xref ref-type="bibr" rid="B12">12</xref>].</p>
<p>In order to understand the nature and extent of the urbanisation process, it is necessary to investigate the patterns formed by urban settlements, including the features and functionality of the individual settlements and relationships within a region&#x2019;s urban system [<xref ref-type="bibr" rid="B13">13</xref>]. Population size can be identified as one of the most fundamental attributes of urban settlements, and, to a great extent, it captures their relative importance with respect to others in the urban system since it is often well correlated with other socio-economic indicators [<xref ref-type="bibr" rid="B14">14</xref>]. Furthermore, describing urban settlements by their population size facilitates comparisons between them through history and across civilisations. For these reasons, population size is regarded as &#x201c;the first dimension&#x201d;, i.e., the most relevant factor to differentiate a set of urban settlements [<xref ref-type="bibr" rid="B13">13</xref>].</p>
<p>A systematic knowledge of how population size characterises urban settlements is an essential element for the creation of a quantitative science of cities [<xref ref-type="bibr" rid="B15">15</xref>, <xref ref-type="bibr" rid="B16">16</xref>]. Urban scaling models are particularly suitable for this purpose since it is possible to approximately predict the expected average characteristics that a settlement of a given population size should display through the observation of scaling behaviour. What is more, deviations from urban scaling models sometimes become the most interesting information for both policy and scientific analyses, as they are usually the result of local characteristics that make a settlement exceptional with respect to its peers [<xref ref-type="bibr" rid="B17">17</xref>]. Following the tradition inherited from allometry theory [<xref ref-type="bibr" rid="B18">18</xref>], which studies the relation between the body size of different organisms and other features such as shape, anatomy or physiology, urban scaling models hypothesise that environmental, economic, and social properties of urban settlements scale as a power law of their population size [<xref ref-type="bibr" rid="B17">17</xref>]. More formally, if <italic>X</italic> is the population of a city and <italic>Y</italic> is an urban indicator, then <italic>Y</italic> is a function of the population so that:<disp-formula id="e1">
<mml:math id="m1">
<mml:mi>Y</mml:mi>
<mml:mfenced open="(" close=")">
<mml:mrow>
<mml:mi>X</mml:mi>
</mml:mrow>
</mml:mfenced>
<mml:mo>&#x3d;</mml:mo>
<mml:mi>&#x3b1;</mml:mi>
<mml:msup>
<mml:mrow>
<mml:mi>X</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b2;</mml:mi>
</mml:mrow>
</mml:msup>
<mml:mo>,</mml:mo>
</mml:math>
<label>(1)</label>
</disp-formula>where the scaling exponent <italic>&#x3b2;</italic> &#x3e; 0 is, in general, different from 1, and <italic>&#x3b1;</italic> is a proportionality constant. Using scaling models of this form, it has been found before that the economic productivity of a city varies with its population size with the scaling exponent estimated from data to be <inline-formula id="inf1">
<mml:math id="m2">
<mml:mrow>
<mml:mover accent="true">
<mml:mrow>
<mml:mi>&#x3b2;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">&#x302;</mml:mo>
</mml:mover>
</mml:mrow>
<mml:mo>&#x3d;</mml:mo>
<mml:mn>1.15</mml:mn>
</mml:math>
</inline-formula> [<xref ref-type="bibr" rid="B17">17</xref>], i.e., it increases systematically by 2.21 times its value with every doubling of a city&#x2019;s population. The walking speed [<xref ref-type="bibr" rid="B19">19</xref>], the criminal activity [<xref ref-type="bibr" rid="B20">20</xref>], the CO<sub>2</sub> emissions [<xref ref-type="bibr" rid="B21">21</xref>], the average number of contacts and communication activity [<xref ref-type="bibr" rid="B22">22</xref>], the economic diversification [<xref ref-type="bibr" rid="B23">23</xref>], the road length distribution [<xref ref-type="bibr" rid="B24">24</xref>], the number of people migrating to a city [<xref ref-type="bibr" rid="B25">25</xref>], the amount of media coverage received by a city [<xref ref-type="bibr" rid="B26">26</xref>] or the number of road traffic accidents [<xref ref-type="bibr" rid="B27">27</xref>, <xref ref-type="bibr" rid="B28">28</xref>], have all been found to scale as a power law with city size.</p>
<p>Scaling models provide a simple way of classifying data from a given urban system as linear, superlinear or sublinear, depending on whether the value of the scaling exponent <italic>&#x3b2;</italic> is equal, larger or smaller than one. The scaling behaviour then determines whether larger cities are more efficient or productive (or demanding or polluting) than the smaller counterparts for some urban characteristic, i.e., whether that characteristic follows an economy of scale [<xref ref-type="bibr" rid="B29">29</xref>]. For example, if <italic>&#x3b2;</italic> &#x3c; 1 for some <italic>Y</italic> (the number of petrol stations, for example), it means that large cities are more efficient (or that people in larger cities tend to &#x201c;share&#x201d; petrol stations).</p>
<p>Urban scaling behaviours are a manifestation of the hierarchical structure of the settlements that form the urban system, with the peak of this hierarchy corresponding to the large global metropolises. The hierarchy is such that the larger the settlements, the fewer their number. There are many small villages and towns but few extremely populous cities. Furthermore, as settlements grow in population size, they tend to be located further apart, and the variety of their functions also increases. These observations are usually attributed to the existence of agglomeration economies or economies of scale as a utility maximising mechanism for economic agents [<xref ref-type="bibr" rid="B14">14</xref>]. Central Place Theory is among the most known theoretical frameworks that attempts to explain the number, size, functions and spatial distribution of urban settlements in an urban system. Whilst this theory, devised in 1933 by Christaller [<xref ref-type="bibr" rid="B30">30</xref>], deduces the observed hierarchies of urban systems, it is based on the assumption that different settlements have different levels of attractiveness, and this already determines their capacity to absorb more population from the surrounding areas [<xref ref-type="bibr" rid="B14">14</xref>]. However, Central Place Theory has been criticised for being a static framework that does not consider the temporal aspect in the development of the urban hierarchy.</p>
<p>Other approaches have been taken to explain the hierarchy of urban settlements, that, instead of relying on aspects related to microeconomics, depend solely on probabilistic considerations. Mathematically, the distribution of population sizes in an urban system can often be modelled via heavy-tailed probability distributions, such as the Pareto [<xref ref-type="bibr" rid="B31">31</xref>, <xref ref-type="bibr" rid="B32">32</xref>] or the lognormal [<xref ref-type="bibr" rid="B33">33</xref>]. As shown in Pumain&#x2019;s review [<xref ref-type="bibr" rid="B14">14</xref>], dynamic models for the growth of urban population sizes, such as Gibrat&#x2019;s law [<xref ref-type="bibr" rid="B33">33</xref>], have been proposed as the underlying mechanism for these observed heavy-tailed distributions. In practice, even though the distribution of urban population sizes displays regularities in its behaviour, deviations from the proposed growth models are common [<xref ref-type="bibr" rid="B34">34</xref>]. For example, the largest urban areas are often more populous than predicted by the underlying heavy-tailed distributions. These extremely large urban areas were detected by Jefferson in [<xref ref-type="bibr" rid="B35">35</xref>], who named them &#x201c;primate cities&#x201d;. Years later, Lah&#xe8;rre and Sornette also studied these outliers by following a probabilistic approach and referred to them as &#x201c;dragon-kings&#x201d;.</p>
<p>As predicted by the different models that describe the hierarchy of urban settlements, there are indeed certain urban areas that are unique which play central roles in the economic productivity of firms and workers [<xref ref-type="bibr" rid="B36">36</xref>], are especially prolific in some industry sectors or have an extraordinary cultural output [<xref ref-type="bibr" rid="B37">37</xref>]. Typically, these urban areas have a population larger than the surrounding settlements, as is the case of primate cities or dragon-kings at the country level. Their special status has usually been forged by amplifying mechanisms for their own growth: their relatively large population size increases the probability of developing and using innovations, which will eventually attract more people. Furthermore, because more people live in them, there are more interactions with the rest of the urban network, and so, they may capture innovations that come from elsewhere [<xref ref-type="bibr" rid="B14">14</xref>]. In this sense, we can think of these urban settlements with a relatively large population size as a core, formed by their corresponding built-up area and a &#x201c;region of influence&#x201d; surrounding this core. The socio-economic activities and land use management in the region of influence will be subject to the needs and requirements of the core. Identifying regions of influence has been the object of many studies, for example, based on clustering algorithms [<xref ref-type="bibr" rid="B38">38</xref>&#x2013;<xref ref-type="bibr" rid="B40">40</xref>], or based on commuting patterns [<xref ref-type="bibr" rid="B41">41</xref>], where urban areas are merged into a unit based on some proximity criteria.</p>
<p>Here, we develop a modelling framework to understand some structural aspects of the patterns formed by urban settlements. Given that Africa will be one of the regions most affected by the urbanisation process in the coming decades, we base our analysis on an urban network of African cities. We propose an algorithm to determine the region of influence of cities in the urban network, based on the consideration that cities within a threshold road distance from a relatively large city are in their region of influence. Once the regions of influence are defined, we apply urban scaling models to describe the relationship between city size and several characteristics of the region of influence, such as the number of other cities and the population within this region. The findings of our work show that there is a significant scaling behaviour beyond cities themselves, involving their region of influence.</p>
<p>We observe that three distinct regimes arise, depending on the value of the threshold road distance used to determine the regions of influence. For a road distance smaller than 114&#xa0;km, large cities are surrounded by many urban centres within their region of influence, but these tend to be small cities. Therefore, for less than 114&#xa0;km, large cities are surrounded by many small cities. Between 114 and 190&#xa0;km, large cities are then surrounded by a significantly high number of cities and incorporate a large population. By 190&#xa0;km, the number of cities and population within the region of influence of large cities is at a maximum. Above this distance, although large cities are still surrounded by a significantly large number of cities and corresponding population, the effect decreases with a larger distance threshold. Our results suggest a sublinear scaling impact of city size in terms of the size of the region of influence of a city.</p>
</sec>
<sec id="s2">
<title>2 Methods</title>
<p>Urban road networks are a type of spatial network where nodes represent cities, and highways that connect them are the links or edges of the network [<xref ref-type="bibr" rid="B42">42</xref>&#x2013;<xref ref-type="bibr" rid="B44">44</xref>]. Urban road networks have been used to study city to city migration [<xref ref-type="bibr" rid="B45">45</xref>], historical and geographical features of the network [<xref ref-type="bibr" rid="B46">46</xref>&#x2013;<xref ref-type="bibr" rid="B48">48</xref>] and local and global indicators, such as connectivity, centrality, hierarchy, clustering and others [<xref ref-type="bibr" rid="B43">43</xref>, <xref ref-type="bibr" rid="B49">49</xref>&#x2013;<xref ref-type="bibr" rid="B54">54</xref>]. They have also been used to analyse proximity or the directedness of the network or the geometric design of its roads [<xref ref-type="bibr" rid="B42">42</xref>, <xref ref-type="bibr" rid="B55">55</xref>]. The transport network is one of the main factors that shape urban patterns [<xref ref-type="bibr" rid="B56">56</xref>] since the ability to access global networks influences the development of cities [<xref ref-type="bibr" rid="B57">57</xref>]. Size, proximity and network connectivity shape city functions [<xref ref-type="bibr" rid="B58">58</xref>] and are essential for delivering healthcare, for distributing resources, and for economic development [<xref ref-type="bibr" rid="B59">59</xref>, <xref ref-type="bibr" rid="B60">60</xref>].</p>
<p>Here, we begin with the African urban network [<xref ref-type="bibr" rid="B55">55</xref>], constructed by considering all continental cities with more than 100,000 inhabitants as the nodes, obtained from [<xref ref-type="bibr" rid="B61">61</xref>]. The edges of the network were created based on the road infrastructure from [<xref ref-type="bibr" rid="B62">62</xref>], using all primary roads, highways and trunk roads. Each edge was constructed by measuring the physical distance of consecutive points that describe the intricate patterns of the roads. Thus, a reasonably good estimate of its road length is available for each edge. Additional nodes besides cities are needed to fully describe the road infrastructure, such as road intersections. These nodes are labelled as &#x201c;transport nodes&#x201d; and help define possible routes between cities. Some transport nodes correspond to towns with less than 100,000 inhabitants, so they are labelled as attached to nearby cities. The urban network enables us to consider the existing roads in the continent and measure the travelling distance rather than the physical distance between cities. The constructed network is formed by 7,361 nodes (2,162 cities and 5,199 transport nodes) and 9,159 edges. Also, the network is connected, meaning that it is possible to find a sequence of nodes and existing roads that connects any pair of cities, and therefore, it is also possible to find the shortest road distance between any two cities and define it as the network distance. The network consists of 361,000&#xa0;km of road infrastructure and connects 461 million people living in African cities, representing roughly 39% of the continent&#x2019;s population.</p>
<sec id="s2-1">
<title>2.1 Constructing the Region of Influence of a City</title>
<p>Cities are spatially arranged in a highly ordered pattern where large cities cluster with others while small towns tend to be more isolated [<xref ref-type="bibr" rid="B63">63</xref>]. Yet, whilst large cities tend to attract more population, they also create some dispersion by having an increased cost of living and by the competition they impose on the nearby population in terms of resources, such as food or water [<xref ref-type="bibr" rid="B64">64</xref>]. Therefore, instead of a single cluster of cities, we expect to detect many clusters or city &#x201c;archipelagos&#x201d;, where large and distant cities form the core, and medium and small secondary towns fall within the corresponding region of influence [<xref ref-type="bibr" rid="B44">44</xref>].</p>
<p>The list of all cities in decreasing order according to their population is considered. For city <italic>C</italic>
<sub>1</sub>, the city with the largest population size, all urban agglomerations at a road distance smaller than some influence distance <italic>&#x3b4;</italic>, with <italic>&#x3b4;</italic> &#x3e; 0, are considered to be within the region of influence <inline-formula id="inf2">
<mml:math id="m3">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>1</mml:mn>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> of <italic>C</italic>
<sub>1</sub>. From the list, all cities in <inline-formula id="inf3">
<mml:math id="m4">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>1</mml:mn>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> are removed, including city <italic>C</italic>
<sub>1</sub>. Then, the largest city remaining in the list is labelled as <italic>C</italic>
<sub>2</sub> and its region of influence <inline-formula id="inf4">
<mml:math id="m5">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>2</mml:mn>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> is constructed in a similar fashion. The procedure finishes when the list of cities is empty, meaning that all cities have been assigned to only one region of influence (<xref ref-type="fig" rid="F1">Figure 1</xref>). The result gives <italic>M</italic> regions of influence, <inline-formula id="inf5">
<mml:math id="m6">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>1</mml:mn>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
<mml:mo>,</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>2</mml:mn>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
<mml:mo>,</mml:mo>
<mml:mo>&#x2026;</mml:mo>
<mml:mo>,</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>M</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula>. Each region of influence <inline-formula id="inf6">
<mml:math id="m7">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> is identified by its &#x201c;centre&#x201d;, or city <italic>i</italic>, corresponding to the largest city of that region of influence.</p>
<fig id="F1" position="float">
<label>FIGURE 1</label>
<caption>
<p>Scheme for constructing the region of influence <inline-formula id="inf7">
<mml:math id="m8">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> of cities. Cities are represented by discs, according to their size. For a short influence distance <italic>&#x3b4;</italic> (top) many small regions are formed, represented by different colour ribbons. The centre of each region is the white disc. Some of the cities which were a centre for small values of the influence distance <italic>&#x3b4;</italic>, become part of the region of influence of another city for larger values of <italic>&#x3b4;</italic>.</p>
</caption>
<graphic xlink:href="fphy-10-858307-g001.tif"/>
</fig>
<p>For different values of <italic>&#x3b4;</italic>, a distinct number of regions of influence is obtained, that is, <italic>M</italic> depends on <italic>&#x3b4;</italic>. Also, a region of influence <inline-formula id="inf8">
<mml:math id="m9">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> might contain a single city (for instance, for isolated towns and/or small values of <italic>&#x3b4;</italic>).</p>
<p>For each region of influence, two metrics are constructed. First, the <italic>number of cities</italic> <italic>&#x3ba;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>) &#x3e; 0, corresponding to the number of cities in <inline-formula id="inf9">
<mml:math id="m10">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> including city <italic>i</italic>. Second, the <italic>population of influence</italic> <italic>&#x3d5;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>) &#x2265; 0, corresponding to the urban population inside region <inline-formula id="inf10">
<mml:math id="m11">
<mml:msub>
<mml:mrow>
<mml:mi mathvariant="script">R</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula>, but now without considering the population of city <italic>C</italic>
<sub>
<italic>i</italic>
</sub>. By not counting the population of city <italic>C</italic>
<sub>
<italic>i</italic>
</sub>, then a large value for <italic>&#x3d5;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>) is not due to a large population in <italic>C</italic>
<sub>
<italic>i</italic>
</sub> directly.</p>
</sec>
<sec id="s2-2">
<title>2.2 Comparing Against Randomness</title>
<p>The algorithm for constructing regions of influence is based on city size. Therefore, regions of influence with larger centres will be more likely to have higher values of <italic>&#x3ba;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>) and of <italic>&#x3d5;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>) since they appear early on in the list. Thus, observing any impact of city size could be simply the result of the algorithm and not because large cities are surrounded by more emergent cities and more population.</p>
<p>To detect if the observed results are only due to our algorithm or if large cities are, in fact, surrounded by more emergent cities and population, we consider a random permutation of the nodes in the network as follows. We keep the structure of nodes and edges, but we permute the city size among its nodes. With this technique, a large city takes up a random location in the network. We then follow the same algorithm to construct regions of influence and measure a permuted (<italic>p</italic>) number of cities <inline-formula id="inf11">
<mml:math id="m12">
<mml:msubsup>
<mml:mrow>
<mml:mi>&#x3ba;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>p</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:mrow>
</mml:msubsup>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> and the population of influence <inline-formula id="inf12">
<mml:math id="m13">
<mml:msubsup>
<mml:mrow>
<mml:mi>&#x3d5;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>p</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:mrow>
</mml:msubsup>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula>. Suppose the results observed for the original network and the permuted network for <italic>&#x3ba;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>) and <inline-formula id="inf13">
<mml:math id="m14">
<mml:msubsup>
<mml:mrow>
<mml:mi>&#x3ba;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>p</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:mrow>
</mml:msubsup>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula>, and also in terms of the population <italic>&#x3d5;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>) and <inline-formula id="inf14">
<mml:math id="m15">
<mml:msubsup>
<mml:mrow>
<mml:mi>&#x3d5;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>p</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:mrow>
</mml:msubsup>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula> are similar. In this case, the metrics are the result of our algorithm. However, if the observed metrics are different when the network is permuted, we can ensure that large cities&#x2019; position in the network creates this observed urban scaling.</p>
</sec>
</sec>
<sec id="s3">
<title>3 Results</title>
<p>Useful insights arise when observing Africa&#x2019;s urban network. For example, defining the city degree as the number of roads that connect it with somewhere else (so, the city degree is the node degree), a sublinear behaviour is observed [<xref ref-type="bibr" rid="B55">55</xref>]. The road network made of continental cities in Africa has a diameter (or maximum network distance) of 11,950&#xa0;km between Umtata Central in South Africa and Tinduf in Argelia. The average road distance between each pair of cities is 4,559&#xa0;km. In contrast, the average geodesic distance is 3,264&#xa0;km, suggesting that road distances are 39.6% times larger than the shortest distance between cities (<xref ref-type="fig" rid="F2">Figure 2</xref>).</p>
<fig id="F2" position="float">
<label>FIGURE 2</label>
<caption>
<p>For different values of <italic>&#x3b4;</italic>, distinct regions of influence are constructed. For some value of <italic>&#x3b4;</italic>, all regions of influence are identified using the same colour. Larger values of <italic>&#x3b4;</italic> have darker colours and smaller values of <italic>&#x3b4;</italic>, corresponding to smaller regions of influence, have lighter colours.</p>
</caption>
<graphic xlink:href="fphy-10-858307-g002.tif"/>
</fig>
<p>The network has 2,162 cities. With <italic>&#x3b4;</italic> &#x3d; 50&#xa0;km, we get <italic>M</italic> &#x3d; 1, 131 regions of influence (<xref ref-type="fig" rid="F3">Figure 3</xref>). However, by simulating 2,162 random points inside continental Africa and following the same procedure (also with <italic>&#x3b4;</italic> &#x3d; 50&#xa0;km), we obtain 1, 680 &#xb1; 25 regions. Therefore, cities are much more clustered than randomness would suggest, and there are vast empty regions in the continent (<xref ref-type="fig" rid="F2">Figure 2</xref>). Also, we observe that the most isolated town in the continent is in the south of Libya, in the Sahara Desert, 851&#xa0;km away from the nearest city. However, by simulating 2,162 random points inside Africa, we get that the most isolated town is roughly 200&#xa0;km away from the nearest city. Indeed, most cities are clustered around some main urban corridors (including the Nile River, the Mediterranean coast, the Lagos-Abidjan coast in West Africa, Lake Victoria and the South Africa network). Still, some cities are highly isolated in the Sahara Desert, the Congolian Rainforest and the Kalahari Desert in Botswana, Namibia and South Africa (see the <xref ref-type="sec" rid="s10">Supplementary Appendix</xref>).</p>
<fig id="F3" position="float">
<label>FIGURE 3</label>
<caption>
<p>The result of considering <italic>&#x3b4;</italic> &#x3d; 255&#xa0;km. The procedure gives <italic>M</italic> &#x3d; 288 regions of influence. The largest region of influence has 246 cities and 57 million inhabitants, with Cairo at its centre. The largest centres are Cairo, Lagos, Onitsha, Kinshasa, Johannesburg, Luanda, Alexandria and Nairobi. With <italic>&#x3b4;</italic> &#x3d; 255&#xa0;km, there are 84 regions of influence with a single city.</p>
</caption>
<graphic xlink:href="fphy-10-858307-g003.tif"/>
</fig>
<p>With a distance <italic>&#x3b4;</italic> &#x3d; 70&#xa0;km, the largest region of influence has Cairo as its centre, with 40.3 million inhabitants (57% of them corresponding to people living in Cairo and 43% in cities nearby Cairo).</p>
<sec id="s3-1">
<title>3.1 Impact of City Size on the Regions of Influence</title>
<p>For some value of <italic>&#x3b4;</italic>, the expected number of cities inside a region of influence conditional on the population size of the centre <italic>P</italic>
<sub>
<italic>i</italic>
</sub> is denoted by <italic>E</italic>[<italic>&#x3ba;</italic>
<sub>
<italic>i</italic>
</sub>&#x7c;<italic>P</italic>
<sub>
<italic>i</italic>
</sub>]. We use the urban scaling modelling framework to express this quantity according to <xref ref-type="disp-formula" rid="e2">Eq. 2</xref>:<disp-formula id="e2">
<mml:math id="m16">
<mml:mi>E</mml:mi>
<mml:mfenced open="[" close="]">
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3ba;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mfenced open="(" close=")">
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:mfenced>
<mml:mo stretchy="false">&#x7c;</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:mfenced>
<mml:mo>&#x3d;</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b1;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:msub>
<mml:msubsup>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b2;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:msubsup>
<mml:mo>,</mml:mo>
</mml:math>
<label>(2)</label>
</disp-formula>where <italic>&#x3b1;</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> and <italic>&#x3b2;</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> are the scaling coefficients corresponding to the quantity <italic>&#x3ba;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>). We estimate the value of these scaling coefficients via a Poisson regression. For example, for a distance <italic>&#x3b4;</italic> &#x3d; 155&#xa0;km, we get that <italic>&#x3b1;</italic>
<sub>155</sub> &#x3d; (7.326 &#xb1; 1.262) &#xd7; 10<sup>&#x2013;4</sup> and that <italic>&#x3b2;</italic>
<sub>155</sub> &#x3d; 0.682 9 &#xb1; 0.012, so the expected number of cities inside a region of influence is given by <inline-formula id="inf15">
<mml:math id="m17">
<mml:mi>E</mml:mi>
<mml:mrow>
<mml:mo stretchy="false">[</mml:mo>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3ba;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
<mml:mo stretchy="false">&#x7c;</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
<mml:mo stretchy="false">]</mml:mo>
</mml:mrow>
<mml:mo>&#x3d;</mml:mo>
<mml:mn>7.326</mml:mn>
<mml:msubsup>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>0.682</mml:mn>
<mml:mspace width="0.17em"/>
<mml:mn>9</mml:mn>
</mml:mrow>
</mml:msubsup>
<mml:mo>&#xd7;</mml:mo>
<mml:mn>1</mml:mn>
<mml:msup>
<mml:mrow>
<mml:mn>0</mml:mn>
</mml:mrow>
<mml:mrow>
<mml:mo>&#x2212;</mml:mo>
<mml:mn>4</mml:mn>
</mml:mrow>
</mml:msup>
</mml:math>
</inline-formula>. We also use the same procedure to model the expected population of the region of influence, conditional on the population of the centre. This can be expressed as<disp-formula id="e3">
<mml:math id="m18">
<mml:mi>E</mml:mi>
<mml:mfenced open="[" close="]">
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3d5;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mfenced open="(" close=")">
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:mfenced>
<mml:mo stretchy="false">&#x7c;</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:mfenced>
<mml:mo>&#x3d;</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi>a</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:msub>
<mml:msubsup>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>b</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:msubsup>
<mml:mo>,</mml:mo>
</mml:math>
<label>(3)</label>
</disp-formula>for some <italic>a</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> and <italic>b</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> which are the scaling coefficients for <italic>&#x3d5;</italic>
<sub>
<italic>i</italic>
</sub>(<italic>&#x3b4;</italic>). Again, a Poisson regression yields for <italic>&#x3b4;</italic> &#x3d; 155&#xa0;km, <italic>a</italic>
<sub>155</sub> &#x3d; 0.567 3 &#xb1; 0.000 4 and <italic>b</italic>
<sub>155</sub> &#x3d; 1.022 &#xb1; 5 &#xd7; 10<sup>&#x2013;5</sup>. For <italic>&#x3b4;</italic> &#x3d; 155&#xa0;km, our results suggest that regions of influence where the centre is a large city have more urban agglomerations and more population than regions where the centre is smaller (<xref ref-type="fig" rid="F4">Figure 4</xref>).</p>
<fig id="F4" position="float">
<label>FIGURE 4</label>
<caption>
<p>Number of cities <italic>&#x3ba;</italic>(155) inside regions of influence <bold>(A)</bold> and population inside the region of influence (ignoring the population from the centre) <italic>&#x3d5;</italic>(155) <bold>(B)</bold> against city size (horizontal axis). Axis have a logarithmic scale. Each city is represented by a coloured disc, with its size proportional to population. Five African regions are represented by the colour of the disc.</p>
</caption>
<graphic xlink:href="fphy-10-858307-g004.tif"/>
</fig>
<p>For values of <italic>&#x3b4;</italic> &#x3d; 155 we get that <italic>&#x3b2;</italic>
<sub>155</sub> is smaller than one and <italic>b</italic>
<sub>155</sub> is close to one. Yet, the impact of city size is significant for the size and population of regions of influence. Comparing, for example, the number of cities of the region of influence of city <italic>C</italic>
<sub>
<italic>i</italic>
</sub> and of city <italic>C</italic>
<sub>
<italic>j</italic>
</sub>, ten times larger than city <italic>C</italic>
<sub>
<italic>i</italic>
</sub>, then we expect <inline-formula id="inf16">
<mml:math id="m19">
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b1;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>155</mml:mn>
</mml:mrow>
</mml:msub>
<mml:msubsup>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>j</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b2;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>155</mml:mn>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:msubsup>
<mml:mo>/</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b1;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>155</mml:mn>
</mml:mrow>
</mml:msub>
<mml:msubsup>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b2;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>155</mml:mn>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:msubsup>
<mml:mo>&#x3d;</mml:mo>
<mml:mn>1</mml:mn>
<mml:msup>
<mml:mrow>
<mml:mn>0</mml:mn>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b2;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>155</mml:mn>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:msup>
<mml:mo>&#x2248;</mml:mo>
<mml:mn>4.8</mml:mn>
</mml:math>
</inline-formula> times more cities and <inline-formula id="inf17">
<mml:math id="m20">
<mml:mn>1</mml:mn>
<mml:msup>
<mml:mrow>
<mml:mn>0</mml:mn>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>b</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>155</mml:mn>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:msup>
<mml:mo>&#x2248;</mml:mo>
<mml:mn>10.5</mml:mn>
</mml:math>
</inline-formula> times more population (without considering the population from the centre). Furthermore, this is not the result of constructing regions of influence based on larger cities. By permuting the population of cities in the network, we get that <inline-formula id="inf18">
<mml:math id="m21">
<mml:msubsup>
<mml:mrow>
<mml:mi>&#x3b2;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>155</mml:mn>
</mml:mrow>
<mml:mrow>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>p</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:mrow>
</mml:msubsup>
<mml:mo>&#x2208;</mml:mo>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mn>0.496</mml:mn>
<mml:mspace width="0.17em"/>
<mml:mn>8,0.570</mml:mn>
<mml:mspace width="0.17em"/>
<mml:mn>2</mml:mn>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula>, which is far from the observed value of <italic>&#x3b2;</italic>
<sub>155</sub> &#x3d; 0.682 9 &#xb1; 0.012, and <inline-formula id="inf19">
<mml:math id="m22">
<mml:msubsup>
<mml:mrow>
<mml:mi>b</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mn>155</mml:mn>
</mml:mrow>
<mml:mrow>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mi>p</mml:mi>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:mrow>
</mml:msubsup>
<mml:mo>&#x2208;</mml:mo>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:mn>0.701</mml:mn>
<mml:mspace width="0.17em"/>
<mml:mn>0,0.890</mml:mn>
<mml:mspace width="0.17em"/>
<mml:mn>7</mml:mn>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
</mml:math>
</inline-formula>, also far from the <italic>b</italic>
<sub>155</sub> &#x3d; 1.022 &#xb1; 5 &#xd7; 10<sup>&#x2013;5</sup> obtained.</p>
<p>How far the region of influence of a city spreads is a critical aspect of the model. By considering different values of the influence distance <italic>&#x3b4;</italic>, we obtain different regions of influence. The result also gives different values for <italic>&#x3b2;</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> and <italic>b</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> (<xref ref-type="fig" rid="F5">Figure 5</xref>).</p>
<fig id="F5" position="float">
<label>FIGURE 5</label>
<caption>
<p>Observed and permuted values of <italic>&#x3b2;</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> <bold>(A)</bold> and <italic>b</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> <bold>(B)</bold> for the number of cities and the population in the region of influence of cities. The horizontal axis is the influence distance <italic>&#x3b4;</italic> in kilometres. The red lines are the observed values, and the purple line and the shaded interval around the permuted results give the range of values obtained from the permuted network. Intervals are obtained for a fixed value of <italic>&#x3b4;</italic> by permuting 100 times the population size of cities and removing the top 5 and the bottom 5 simulated values to drop outliers.</p>
</caption>
<graphic xlink:href="fphy-10-858307-g005.tif"/>
</fig>
<p>The observed scaling parameters for the number of cities <italic>&#x3b2;</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> remain above and outside the intervals obtained with a permuted network. Thus, the number of cities inside a region of influence grows with city size in a non-trivial manner. Therefore, the network structure plays a role, and large cities tend to be surrounded by numerous urban agglomerations. The observed scaling parameter for the urban population within a region of influence <italic>b</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> also remains above the permuted values. However, for small distances, it has values inside the interval of the permuted network, suggesting that cities tend to be surrounded by smaller towns rather than big cities.</p>
<p>For small regions of influence, we get many cites with a small population. For example, for <italic>&#x3b4;</italic> &#x3d; 50&#xa0;km, we get that <italic>&#x3b2;</italic>
<sub>50</sub> &#x3d; 0.3. Thus, when a city is ten times larger, it has twice as many cities within a network distance of 50&#xa0;km (since 10<sup>0.3</sup> &#x2248; 2). For the same <italic>&#x3b4;</italic> &#x3d; 50&#xa0;km, <italic>b</italic>
<sub>50</sub> &#x3d; 0.56. When a city is ten times larger, it has 3.6 times more population within a distance of 50&#xa0;km. Thus, a ten times larger city tends to have twice as many urban areas and 3.6 times more population at a distance of 50&#xa0;km. Meaning it has more and larger cities nearby.</p>
<p>The average size of cities within the region of influence depends on the population of the centre which can be computed based on <xref ref-type="disp-formula" rid="e2">Eq. 2</xref>. The result gives<disp-formula id="e4">
<mml:math id="m23">
<mml:msub>
<mml:mrow>
<mml:mi>&#x3bc;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mfenced open="(" close=")">
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:mfenced>
<mml:mo>&#x3d;</mml:mo>
<mml:mfrac>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3d5;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mfenced open="(" close=")">
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:mfenced>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3ba;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mfenced open="(" close=")">
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:mfenced>
</mml:mrow>
</mml:mfrac>
<mml:mo>&#x3d;</mml:mo>
<mml:mfrac>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>a</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b1;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:mfrac>
<mml:msubsup>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>b</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:msub>
<mml:mo>&#x2212;</mml:mo>
<mml:msub>
<mml:mrow>
<mml:mi>&#x3b2;</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b4;</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
</mml:msubsup>
<mml:mo>,</mml:mo>
</mml:math>
<label>(4)</label>
</disp-formula>where the exponent (<italic>b</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> &#x2212; <italic>&#x3b2;</italic>
<sub>
<italic>&#x3b4;</italic>
</sub>) &#x3e; 0 indicates that large cities are surrounded by more populous urban agglomerations. Results show that <italic>b</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> &#x2212; <italic>&#x3b2;</italic>
<sub>
<italic>&#x3b4;</italic>
</sub> remains well above values of zero for all values of <italic>&#x3b4;</italic> &#x3e; 0 (<xref ref-type="fig" rid="F6">Figure 6</xref>).</p>
<fig id="F6" position="float">
<label>FIGURE 6</label>
<caption>
<p>Average city size (vertical axis) for different values of the influence distance <italic>&#x3b4;</italic> (horizontal axis) for a centre with a population of 23 million inhabitants (nearly the population of Cairo, for example) in purple, and a city 10, 100, and 1000 times smaller (the pink, orange, and yellow polygons). Thus, at a distance of 50&#xa0;km from a city with the size of Cairo, for example, we expect cities to have an average size of roughly 300,000 inhabitants. However, at a distance of 50&#xa0;km from a smaller city, for example, a centre with 2.3 million inhabitants, cities in the region of influence will have, on average, 100,000 inhabitants.</p>
</caption>
<graphic xlink:href="fphy-10-858307-g006.tif"/>
</fig>
<p>Our results indicate that big cities are surrounded by more and larger cities within their region of influence. The result is not due to the construction of regions of influence since the permuted network gives less significant coefficients. Large cities tend to cluster, whereas small cities are more likely to be isolated [<xref ref-type="bibr" rid="B64">64</xref>]. Cities form hierarchical structures, a pattern that has also been observed for roads [<xref ref-type="bibr" rid="B65">65</xref>].</p>
<p>There is a significant difference between the size at the centre and the size of cities within the region of influence. Only a few cities are large, and most are small [<xref ref-type="bibr" rid="B30">30</xref>]. For example, for Cairo (with nearly 23 million inhabitants), the average size of a city in its region of influence is 300,000 inhabitants within a few kilometres, and it decays with distance to 200,000. After a discontinuity at about 114&#xa0;km from the centre, the size increases slightly to 260,000 but then decays again with more considerable distances (<xref ref-type="fig" rid="F6">Figure 6</xref>). Thus, cities the size of Cairo, Lagos or Johannesburg can be thought of as massive planets surrounded by a surprisingly large number of minor satellites orbiting around. Considering a network distance of <italic>&#x3b4;</italic> &#x3d; 155&#xa0;km, for example, Cairo has 215 cities within its region of influence, with an average size of fewer than 150,000 inhabitants in each satellite town. Although minor in size, the 215 satellite towns have a total population of 31 million inhabitants, thus, surpassing the size of Cairo itself. Within 155&#xa0;km of Cairo, the city is only 43% of the urban population of the region of influence. This region of influence is similar to the Alexandria-Cairo-Luxor mega-city constructed based on clustering distinct agglomerations [<xref ref-type="bibr" rid="B40">40</xref>]. And the same goes for Lagos, with 49 satellite towns adding nearly 13 million inhabitants in the region. Within 155&#xa0;km, ten out of the top twenty most populated cities in Africa have less than 60% of the population of their regions of influence.</p>
</sec>
<sec id="s3-2">
<title>3.2 Regions With High Isolation</title>
<p>Scaling studies often focus on the large cities, but on the other side of the spectrum, we find a high level of isolation with huge distances to some primary city. Isolation is one of the main contributors to poverty [<xref ref-type="bibr" rid="B66">66</xref>] and our results show that some cities are highly isolated.</p>
<p>For example, with <italic>&#x3b4;</italic> &#x3d; 155&#xa0;km, results show that 203 regions of influence are formed of a single city, with an average size of 90,000 inhabitants. In total, 18.6 million people live in a city that is a single city within a region of influence. Still, with <italic>&#x3b4;</italic> &#x3d; 155&#xa0;km, we get 406 regions of influence where the total population, considering people from the centre as well, has less than one million inhabitants. This means that 406 regions (with 87 million people combined) with less than one million people living in cities within 155&#xa0;km. In the extreme case, with <italic>&#x3b4;</italic> &#x3d; 1000&#xa0;km, we find nine towns at a distance of 1000&#xa0;km or more to their nearest city. Africa is characterised by large booming cities surrounded by an even larger population nearby and many regions with high isolation.</p>
</sec>
</sec>
<sec id="s4">
<title>4 Discussion</title>
<p>Many socio-economic indicators tend to be have disproportionally larger values in more populated cities. For example, large cities tend to have higher crime levels and produce more patents, on a per capita basis (superlinear scaling). Meanwhile, there are other urban indicators, typically those referring to infrastructure, which increase slower than the population (sublinear scaling), suggesting less demand and a sharing of resources. Urban scaling is a crucial aspect of cities that can bring value in the design of policies for producing faster and more sustainable development [<xref ref-type="bibr" rid="B67">67</xref>]. Here, we showed that the scaling impact of city size goes beyond urban indicators experienced within the city. Large cities are surrounded by a disproportionate number of urban agglomerations and corresponding populations, and the effect is observed for some distance, even hundreds of kilometres.</p>
<p>Rather than the city coordinates and geodesic distances, a consideration of the urban network offers a more realistic approximation for travel between cities. A network where the cities are nodes and where the road infrastructure are the edges provides significant details regarding city connectivity and existent natural and political barriers. The network might not capture some details at a very small scale, for instance, details at the street level, such as tolls or highways. Also, the network itself might not be needed for very long distances since approximating the road distance by inflating the geodesic distance by a constant factor of 1.396 [<xref ref-type="bibr" rid="B55">55</xref>] is sufficiently accurate for measuring long-distance interactions. Thus, after a certain threshold, the road distance grows linearly with the geodesic distance (see the <xref ref-type="sec" rid="s10">Supplementary Appendix</xref>). However, for medium distances (between 20 and 300&#xa0;km), where intracity interactions are more prevalent, the network captures the infrastructure, political barriers and the fragmentation of the continent, among many factors that increase the road distance of nearby cities, thus, reducing their interactions.</p>
<p>Our method for constructing regions of influence has some caveats. First, the way cities are defined may alter results [<xref ref-type="bibr" rid="B38">38</xref>, <xref ref-type="bibr" rid="B68">68</xref>, <xref ref-type="bibr" rid="B69">69</xref>]. Here, we have used an Open Access dataset that combines satellite and aerial imagery, official demographic data such as censuses and other cartographic sources [<xref ref-type="bibr" rid="B61">61</xref>]. A city polygon is defined as an area with less than 200&#xa0;m between buildings and constructions in the data. Results might change if a different definition of a city is adopted. Second, the method ignores the implications of international borders in a continent that is not fully integrated and where borders might impose a high cost on journeys and travel between cities. African border cities are growing faster than the average [<xref ref-type="bibr" rid="B70">70</xref>], suggesting that international borders are an essential part of the continent&#x2019;s dynamics and play a role in urban interactions. Third, a city is assigned to a unique region of influence, but some urban areas might have a high dependence and interactions with many cities, perhaps in a hierarchical manner (see the <xref ref-type="sec" rid="s10">Supplementary Appendix</xref> for the results of constructing regions of influence using a hierarchical algorithm). Fourth, we have assumed the same distance threshold across the whole continent for constructing regions of influence. Thus, we use the same values of <italic>&#x3b4;</italic> to construct the region of influence for Nairobi as Cairo, a city four times the size and in a more industrialised country. It is possible to consider other techniques, such as a distance-decay function or varying values of <italic>&#x3b4;</italic> depending on city size, for example, by setting <inline-formula id="inf20">
<mml:math id="m24">
<mml:mi>&#x3b4;</mml:mi>
<mml:mrow>
<mml:mo stretchy="false">(</mml:mo>
<mml:mrow>
<mml:msub>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
</mml:msub>
</mml:mrow>
<mml:mo stretchy="false">)</mml:mo>
</mml:mrow>
<mml:mo>&#x3d;</mml:mo>
<mml:mi>&#x3c1;</mml:mi>
<mml:msubsup>
<mml:mrow>
<mml:mi>P</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>i</mml:mi>
</mml:mrow>
<mml:mrow>
<mml:mi>&#x3b3;</mml:mi>
</mml:mrow>
</mml:msubsup>
</mml:math>
</inline-formula>, for some values of <italic>&#x3c1;</italic> and <italic>&#x3b3;</italic> (so our model is for <italic>&#x3b3;</italic> &#x3d; 0). Also, the impact of distance and the construction of regions of influence may differ in less densely populated and less urban areas. For example, some regional aspects could also be considered. Notice that large cities from the central region of Africa (<xref ref-type="fig" rid="F4">Figure 4</xref>, coloured differently from other regions) fall under the expected number of cities <italic>&#x3ba;</italic> and population <italic>&#x3d5;</italic> within their region of influence. Also, with our scaling parameters, we only observe correlations and not causality for the emergence or the growth of cities. For example, the region along the Nile River and its delta has attracted the emergence of Egyptian cities for its proximity to water but maybe also due to its proximity to Cairo or Alexandria.</p>
<p>Despite those caveats, our results still show some non-trivial patterns in the structure of the urban system formed by African cities. The observed patterns are at the core of serious social issues such as poverty, inequality or isolation.</p>
<sec id="s4-1">
<title>4.1 Regions of Influence of the Present, Mega-Cities of the Future?</title>
<p>When looking at the current situation of cities, it is as if we are observing a screenshot of a movie that is still playing. Particularly, since the urban scaling models are applied to cross-sectional data, the interpretation of the results obtained here should be used in a comparative or descriptive manner as opposed to a predictive one [<xref ref-type="bibr" rid="B71">71</xref>]. Cities are very dynamic and will evolve, grow and adapt [<xref ref-type="bibr" rid="B72">72</xref>], and so the values of the scaling parameters computed here are also likely to change. This is especially the case for the population size of African cities. What has happened in some cities in the last 60&#xa0;years may be nothing compared to what will happen in the next 60&#xa0;years [<xref ref-type="bibr" rid="B73">73</xref>]. In 2020, for example, Egypt was home to 102 million inhabitants, and it is expected to double its population before 2080. The same is true, if not more so, for many African countries, with, for example, Chad, Mali and Niger expected to double their 2020 population before 2050 or even before 2040. Therefore, Ndjamena, Bamako and Niamey will likely double their population in the upcoming decades. If urbanisation and population growth continue, Lagos in Nigeria could soon become the world&#x2019;s largest city, home to 85 or 100 million people [<xref ref-type="bibr" rid="B73">73</xref>].</p>
<p>It is likely that what we observe today as a large metropolis surrounded by dozens of minor satellite urban areas within its region of influence will become a unified polycentric city. A large metropolis will thus incorporate peripheral agglomerations as it expands [<xref ref-type="bibr" rid="B74">74</xref>]. Hence, some, if not most of the cities within the region of influence of large metropolitan areas such as Lagos or Kinshasa, probably will eventually merge. Today&#x2019;s large regions of influence are tomorrow&#x2019;s polycentric cities.</p>
</sec>
</sec>
</body>
<back>
<sec id="s5">
<title>Data Availability Statement</title>
<p>The original contributions presented in the study are included in the article/<xref ref-type="sec" rid="s10">Supplementary Material</xref>, further inquiries can be directed to the corresponding author.</p>
</sec>
<sec id="s6">
<title>Author Contributions</title>
<p>RPC designed the study. RPC and CC-A analysed the results. All authors wrote the manuscript.</p>
</sec>
<sec id="s7">
<title>Funding</title>
<p>RPC received funding for this work from the UKRI&#x2019;s Global Challenge Research Fund, grant: PES/P011055/1. CC-A received funding for this work from the European Research Council's H2020-EU.1.1. Excellent Science Programme, grant: 949670.</p>
</sec>
<sec sec-type="COI-statement" id="s8">
<title>Conflict of Interest</title>
<p>The authors declare that the research was conducted in the absence of any commercial or financial relationships that could be construed as a potential conflict of interest.</p>
</sec>
<sec sec-type="disclaimer" id="s9">
<title>Publisher&#x2019;s Note</title>
<p>All claims expressed in this article are solely those of the authors and do not necessarily represent those of their affiliated organizations, or those of the publisher, the editors and the reviewers. Any product that may be evaluated in this article, or claim that may be made by its manufacturer, is not guaranteed or endorsed by the publisher.</p>
</sec>
<sec id="s10">
<title>Supplementary Material</title>
<p>The Supplementary Material for this article can be found online at: <ext-link ext-link-type="uri" xlink:href="https://www.frontiersin.org/articles/10.3389/fphy.2022.858307/full#supplementary-material">https://www.frontiersin.org/articles/10.3389/fphy.2022.858307/full&#x23;supplementary-material</ext-link>
</p>
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<supplementary-material xlink:href="DataSheet1.CSV" id="SM2" mimetype="application/CSV" xmlns:xlink="http://www.w3.org/1999/xlink"/>
<supplementary-material xlink:href="DataSheet2.CSV" id="SM3" mimetype="application/CSV" xmlns:xlink="http://www.w3.org/1999/xlink"/>
</sec>
<ref-list>
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