Eine Plattform für die Wissenschaft: Bauingenieurwesen, Architektur und Urbanistik
Identification of “Hot Spots” of Social and Housing Difficulty in Urban Areas: Scan Statistics for Housing Market and Urban Planning Policies
The objective of the present work is to use statistical data to identify territorial zones characterized by the presence of urban poverty related to property ownership and the availability of residential services. Poverty clusters have a high concentration of poor people, but that does not mean that everyone living in them is poor. While poverty is widely accepted to be an inherently multi-dimensional concept, it has proved very difficult to develop measures that both capture this multidimensionality and make comparisons over time and space easy. With this in mind, we attempt to apply a Total Fuzzy and Relative (TFR) approach, based on a fuzzy measure of the degree of association of an individual to the totality of the poor and an approach of semantic distance (Munda 1995), based on the definition of a “fuzzy distance” as a discriminating multidimensional reference to rank the availability to property in real estate market, as complement of urban poverty, in the specific case of the City of Bari. These approaches have been improved using the SaTScan methodology, a circle-based spatial-scan statistical method (Kulldorff 1997; Patil and Taille 2004; Aldstat and Getis 2006). It concerns geoinformatic surveillance for poverty hot-spot detection, used as a scientific base to lead urban regeneration policies.
Identification of “Hot Spots” of Social and Housing Difficulty in Urban Areas: Scan Statistics for Housing Market and Urban Planning Policies
The objective of the present work is to use statistical data to identify territorial zones characterized by the presence of urban poverty related to property ownership and the availability of residential services. Poverty clusters have a high concentration of poor people, but that does not mean that everyone living in them is poor. While poverty is widely accepted to be an inherently multi-dimensional concept, it has proved very difficult to develop measures that both capture this multidimensionality and make comparisons over time and space easy. With this in mind, we attempt to apply a Total Fuzzy and Relative (TFR) approach, based on a fuzzy measure of the degree of association of an individual to the totality of the poor and an approach of semantic distance (Munda 1995), based on the definition of a “fuzzy distance” as a discriminating multidimensional reference to rank the availability to property in real estate market, as complement of urban poverty, in the specific case of the City of Bari. These approaches have been improved using the SaTScan methodology, a circle-based spatial-scan statistical method (Kulldorff 1997; Patil and Taille 2004; Aldstat and Getis 2006). It concerns geoinformatic surveillance for poverty hot-spot detection, used as a scientific base to lead urban regeneration policies.
Identification of “Hot Spots” of Social and Housing Difficulty in Urban Areas: Scan Statistics for Housing Market and Urban Planning Policies
Murgante, Beniamino (Herausgeber:in) / Borruso, Giuseppe (Herausgeber:in) / Lapucci, Alessandra (Herausgeber:in) / Montrone, Silvestro (Autor:in) / Perchinunno, Paola (Autor:in) / Di Giuro, Antonia (Autor:in) / Rotondo, Francesco (Autor:in) / Torre, Carmelo Maria (Autor:in)
01.01.2009
22 pages
Aufsatz/Kapitel (Buch)
Elektronische Ressource
Englisch
hot spot , urban poverty , fuzzy , multicriteria analysis , urban planning Geography , Geographical Information Systems/Cartography , Urban Geography / Urbanism (inc. megacities, cities, towns) , World Regional Geography (Continents, Countries, Regions) , Mathematical and Computational Engineering , Landscape/Regional and Urban Planning , Artificial Intelligence , Engineering
Identification of “Hot Spots” of Inner Areas in Italy: Scan Statistic for Urban Planning Policies
BASE | 2019
|Housing market processes, urban housing submarkets and planning policy
British Library Online Contents | 2005
|Housing market processes, urban housing submarkets and planning policy
Online Contents | 2005
|Financial survey of urban housing, statistics on financial aspects of urban housing
Engineering Index Backfile | 1937
|