Advancing methods for comparative urban research: A city-centric protocol and longitudinal dataset for US metropolitan statistical areas.

Comparative urban research in the USA has an unacknowledged data and methodological problem at the metropolitan scale, rooted in geographic and definitional boundary changes of urban areas across time. In this article, we introduce a new spatial dataset, decision criteria, and methodological protoco...

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Main Authors: Jason R Jurjevich, Katie Meehan, Nicholas M J W Chun, Greg Schrock
Format: Article
Language:English
Published: Public Library of Science (PLoS) 2025-01-01
Series:PLoS ONE
Online Access:https://doi.org/10.1371/journal.pone.0316750
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author Jason R Jurjevich
Katie Meehan
Nicholas M J W Chun
Greg Schrock
author_facet Jason R Jurjevich
Katie Meehan
Nicholas M J W Chun
Greg Schrock
author_sort Jason R Jurjevich
collection DOAJ
description Comparative urban research in the USA has an unacknowledged data and methodological problem at the metropolitan scale, rooted in geographic and definitional boundary changes of urban areas across time. In this article, we introduce a new spatial dataset, decision criteria, and methodological protocol for longitudinal and comparative research with US metropolitan statistical areas (MSAs)-known as 'metros'-in a way that centers a 'city-centric' approach to comparison while significantly reducing spatial error and bias. First, we review gaps and limitations of existing approaches and identify three major but previously unacknowledged sources of error, including a new source of bias we call 'spanning error.' Next, we explain our methodological protocol and decision criteria, which are guided by the twin aims of reducing spatial bias and ensuring metropolitan consistency over time. We then introduce our improved dataset, which covers the 50 largest MSAs from 1980-2020. We argue that by centering the urban area as the fundamental unit of analysis-a city-centric approach-our methodology and dataset provides robust and dynamic metropolitan definitions that advance comparative urban studies while improving precision and accuracy in urban data analysis across different time scales. We discuss broader applications of our methodology and identify advantages and limitations over existing techniques, including potential applications of this work in policy, planning, and future research.
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spelling doaj-art-8d74c8301ed24f1c8c936c10bbd170ea2025-08-20T02:08:23ZengPublic Library of Science (PLoS)PLoS ONE1932-62032025-01-01203e031675010.1371/journal.pone.0316750Advancing methods for comparative urban research: A city-centric protocol and longitudinal dataset for US metropolitan statistical areas.Jason R JurjevichKatie MeehanNicholas M J W ChunGreg SchrockComparative urban research in the USA has an unacknowledged data and methodological problem at the metropolitan scale, rooted in geographic and definitional boundary changes of urban areas across time. In this article, we introduce a new spatial dataset, decision criteria, and methodological protocol for longitudinal and comparative research with US metropolitan statistical areas (MSAs)-known as 'metros'-in a way that centers a 'city-centric' approach to comparison while significantly reducing spatial error and bias. First, we review gaps and limitations of existing approaches and identify three major but previously unacknowledged sources of error, including a new source of bias we call 'spanning error.' Next, we explain our methodological protocol and decision criteria, which are guided by the twin aims of reducing spatial bias and ensuring metropolitan consistency over time. We then introduce our improved dataset, which covers the 50 largest MSAs from 1980-2020. We argue that by centering the urban area as the fundamental unit of analysis-a city-centric approach-our methodology and dataset provides robust and dynamic metropolitan definitions that advance comparative urban studies while improving precision and accuracy in urban data analysis across different time scales. We discuss broader applications of our methodology and identify advantages and limitations over existing techniques, including potential applications of this work in policy, planning, and future research.https://doi.org/10.1371/journal.pone.0316750
spellingShingle Jason R Jurjevich
Katie Meehan
Nicholas M J W Chun
Greg Schrock
Advancing methods for comparative urban research: A city-centric protocol and longitudinal dataset for US metropolitan statistical areas.
PLoS ONE
title Advancing methods for comparative urban research: A city-centric protocol and longitudinal dataset for US metropolitan statistical areas.
title_full Advancing methods for comparative urban research: A city-centric protocol and longitudinal dataset for US metropolitan statistical areas.
title_fullStr Advancing methods for comparative urban research: A city-centric protocol and longitudinal dataset for US metropolitan statistical areas.
title_full_unstemmed Advancing methods for comparative urban research: A city-centric protocol and longitudinal dataset for US metropolitan statistical areas.
title_short Advancing methods for comparative urban research: A city-centric protocol and longitudinal dataset for US metropolitan statistical areas.
title_sort advancing methods for comparative urban research a city centric protocol and longitudinal dataset for us metropolitan statistical areas
url https://doi.org/10.1371/journal.pone.0316750
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