Please use this identifier to cite or link to this item: https://repositorio.usj.es/handle/123456789/746

Title: Self-Organizing Maps to Evaluate Multidimensional Trajectories of Shrinkage in Spain
Authors: Ruiz-Varona, Ana ORCID RESEARCHERID SCOPUSID
Lacasta, Javier ORCID RESEARCHERID SCOPUSID
Nogueras-Iso, Javier ORCID RESEARCHERID SCOPUSID
Keywords: Shrinkage; Self-organizing maps; Spatio-temporal data mining; Non-stationary relationship; Municipal trajectory
Issue Date: 19-Jan-2022
Publisher: MDPI
Citation: Ruiz-Varona, A.; Lacasta, J.; Nogueras-Iso, J. Self-Organizing Maps to Evaluate Multidimensional Trajectories of Shrinkage in Spain. ISPRS Int. J. Geo-Inf. 2022, 11, 77. https://doi.org/10.3390/ijgi11020077
Abstract: The analysis of factors influencing urban shrinkage is of great interest to spatial planners and policy makers. Population loss is usually the most relevant indicator of this shrinkage, but many other factors interact in complex ways over time. This paper proposes a ultidimensional and spatio-temporal analysis of the shrinkage process in Spanish municipalities between 1991 and 2020. The method is based on the potentiality provided by self-organizing maps. The generated maps group municipalities according to hidden partial correlations among the data behind the variables characterizing the municipalities at different dates. In addition, as the number of map nodes is too big to allow for the detection of distinct types of municipalities, a Ward clustering algorithm is applied to identify homogeneous areas with a higher probability of shrinkage occurring over time. The results indicate that the municipalities with the lowest shrinkage are more stable and have a geographical concentration: they correspond to areas where peripheralization may occur (creation of surrounding districts close to main urban centers) and constitute the hinterland of large functional areas. The results also report a path of decline, with an important increase in the number of municipalities with higher shrinkage values. This approach has important implications for policy making since local governments may profit from shrinkage predictions.
URI: https://repositorio.usj.es/handle/123456789/746
ISSN: 2220-9964
Appears in Collections:Artículos de revistas

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