Is this scaling nonlinear?

One of the most celebrated findings in complex systems in the last decade is that different indexes y (e.g. patents) scale nonlinearly with the population x of the cities in which they appear, i.e. y∼xβ,β≠1. More recently, the generality of this finding has been questioned in studies that used new d...

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Main Authors: J. C. Leitão, J. M. Miotto, M. Gerlach, E. G. Altmann
Format: Article
Language:English
Published: The Royal Society 2016-01-01
Series:Royal Society Open Science
Subjects:
Online Access:https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.150649
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spelling doaj-a8ac6b217ff34c52a9d822dede21e2842020-11-25T04:06:04ZengThe Royal SocietyRoyal Society Open Science2054-57032016-01-013710.1098/rsos.150649150649Is this scaling nonlinear?J. C. LeitãoJ. M. MiottoM. GerlachE. G. AltmannOne of the most celebrated findings in complex systems in the last decade is that different indexes y (e.g. patents) scale nonlinearly with the population x of the cities in which they appear, i.e. y∼xβ,β≠1. More recently, the generality of this finding has been questioned in studies that used new databases and different definitions of city boundaries. In this paper, we investigate the existence of nonlinear scaling, using a probabilistic framework in which fluctuations are accounted for explicitly. In particular, we show that this allows not only to (i) estimate β and confidence intervals, but also to (ii) quantify the evidence in favour of β≠1 and (iii) test the hypothesis that the observations are compatible with the nonlinear scaling. We employ this framework to compare five different models to 15 different datasets and we find that the answers to points (i)–(iii) crucially depend on the fluctuations contained in the data, on how they are modelled, and on the fact that the city sizes are heavy-tailed distributed.https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.150649scaling lawsstatistical inferenceallometry
collection DOAJ
language English
format Article
sources DOAJ
author J. C. Leitão
J. M. Miotto
M. Gerlach
E. G. Altmann
spellingShingle J. C. Leitão
J. M. Miotto
M. Gerlach
E. G. Altmann
Is this scaling nonlinear?
Royal Society Open Science
scaling laws
statistical inference
allometry
author_facet J. C. Leitão
J. M. Miotto
M. Gerlach
E. G. Altmann
author_sort J. C. Leitão
title Is this scaling nonlinear?
title_short Is this scaling nonlinear?
title_full Is this scaling nonlinear?
title_fullStr Is this scaling nonlinear?
title_full_unstemmed Is this scaling nonlinear?
title_sort is this scaling nonlinear?
publisher The Royal Society
series Royal Society Open Science
issn 2054-5703
publishDate 2016-01-01
description One of the most celebrated findings in complex systems in the last decade is that different indexes y (e.g. patents) scale nonlinearly with the population x of the cities in which they appear, i.e. y∼xβ,β≠1. More recently, the generality of this finding has been questioned in studies that used new databases and different definitions of city boundaries. In this paper, we investigate the existence of nonlinear scaling, using a probabilistic framework in which fluctuations are accounted for explicitly. In particular, we show that this allows not only to (i) estimate β and confidence intervals, but also to (ii) quantify the evidence in favour of β≠1 and (iii) test the hypothesis that the observations are compatible with the nonlinear scaling. We employ this framework to compare five different models to 15 different datasets and we find that the answers to points (i)–(iii) crucially depend on the fluctuations contained in the data, on how they are modelled, and on the fact that the city sizes are heavy-tailed distributed.
topic scaling laws
statistical inference
allometry
url https://royalsocietypublishing.org/doi/pdf/10.1098/rsos.150649
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