A data-based approach to identifying regional typologies and exemplars across the urban–rural gradient in Europe using affinity propagation
Resource type
Authors/contributors
- Fiaschetti, Maurizio (Author)
- Graziano, Marcello (Author)
- Heumann, Benjamin W. (Author)
Title
A data-based approach to identifying regional typologies and exemplars across the urban–rural gradient in Europe using affinity propagation
Abstract
We apply recent developments in data-mining and statistics, using affinity propagation (AP) to identify regional typologies in the European Union (EU) and characterize major factors between rural–rural and rural–urban regional differences, without predetermined thresholds. We identify a representative ‘exemplar’ within each cluster using the drivers of Copus enriched with climate and land-cover/land-use variables to provide geographical context and pinpoint differences driven by natural and human–natural landscapes. Building upon the works of Dijkstra and the Eudora Project, we expand the dimensions of regional differences, introducing a threshold-less, data-driven model able to identify exemplars, and the main characteristics of each cluster or regional typology. © 2021 Regional Studies Association.
Publication
Regional Studies
Date
2021-02-08, February 2021
Volume
55
Issue
12
Pages
1–16
Citation Key
fiaschettiDatabasedApproachIdentifying2021
ISSN
00343404
Language
english
Extra
5 citations (Crossref) [2023-10-31]
Type: Article
tex.citation: https://api.elsevier.com/content/abstract/scopusid/85100769962
Citation
Fiaschetti, M., Graziano, M., & Heumann, B. W. (2021). A data-based approach to identifying regional typologies and exemplars across the urban–rural gradient in Europe using affinity propagation. Regional Studies, 55(12), 1–16. https://doi.org/10.1080/00343404.2021.1871598
Link to this record