Published January 7, 2021 | Version v1
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Spatial and temporal autocorrelations affect Taylor's law for US county populations: Descriptive and predictive models

  • 1. Pace University
  • 2. University of Chicago

Description

Understanding the spatial and temporal distributions and fluctuations of living populations is a central goal in ecology and demography. A scaling pattern called Taylor's law has been used to quantify the distributions of populations. Taylor's law asserts a linear relationship between the logarithm of the mean and the logarithm of the variance of population size. Here, extending previous work, we use generalized least-squares models to describe three types of Taylor's law. These models incorporate the temporal and spatial autocorrelations in the mean-variance data. Moreover, we analyze three purely statistical models to predict the form and slope of Taylor's law. We apply these descriptive and predictive models of Taylor's law to the county population counts of the United States decennial censuses (1790–2010). We find that the temporal and spatial autocorrelations strongly affect estimates of the slope of Taylor's law, and generalized least-squares models that take account of these autocorrelations are often superior to ordinary least-squares models. Temporal and spatial autocorrelations combine with demographic factors (e.g., population growth and historical events) to influence Taylor's law for human population data. Our results show that the assumptions of a descriptive model must be carefully evaluated when it is used to estimate and interpret the slope of Taylor's law.

Data availability

All data files are available from the IPUMS National Historical Geographic Information System: Version 13.0; 2018 database: Manson S, Schroeder J, Van Riper D, Ruggles S. Database: IPUMS National Historical Geographic Information System: Version 13.0; 2018 [cited 2018 July 14]. Available from: http://doi.org/10.18128/D050.V13.0.

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Additional details

Identifiers

DOI
10.1371/journal.pone.0245062
Other
oai:uchicago.tind.io:6080

Funding

National Science Foundation
DMS–1225529

UChicago Information

Division(s)
Physical Sciences Division
Department(s)
Statistics