2018
DOI: 10.1016/j.jclepro.2017.11.249
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A discursive, many-objective approach for selecting more-evolved urban vulnerability assessment models

Abstract: The development of more-evolved urban vulnerability assessment (UVA) models has become an increasingly important issue for both policy agendas and academia. Several requirements have already been set for this goal; they should be pursued simultaneously. However, methods with such integration are yet to be developed. The present paper addresses this integration via a discursive process in which interactions between decision makers and the method contribute to the selection of a model fulfilling these requiremen… Show more

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Cited by 17 publications
(26 citation statements)
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References 65 publications
(89 reference statements)
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“…Compromise solutions are those satisfying several objectives simultaneously, such that there are no other solutions improving any of these objectives without worsening some of the others. In prior work, Salas and Yepes [11] employed the multi-objective approach to find out sets of indicators better representing urban vulnerability accordingly to some characteristics. These characteristics were closeness to expert judgment, goodness of fit of the statistical model representing vulnerability's evolution along time, and the robustness of each set of indicators against data uncertainty (Figure 1, Optimization).…”
Section: Decision-making Framework: Addressing the Curse Of Dimensionmentioning
confidence: 99%
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“…Compromise solutions are those satisfying several objectives simultaneously, such that there are no other solutions improving any of these objectives without worsening some of the others. In prior work, Salas and Yepes [11] employed the multi-objective approach to find out sets of indicators better representing urban vulnerability accordingly to some characteristics. These characteristics were closeness to expert judgment, goodness of fit of the statistical model representing vulnerability's evolution along time, and the robustness of each set of indicators against data uncertainty (Figure 1, Optimization).…”
Section: Decision-making Framework: Addressing the Curse Of Dimensionmentioning
confidence: 99%
“…According to this, an entity is vulnerable when its value, for any of the basic indicators, goes beyond the reference value, calculated as 1.5 (vulnerability threshold) times the national average (base of vulnerability). The basic indicators considered by the Ministry [26] Based on this first basic characterisation, classifying the entities as vulnerable or non-vulnerable, the proposed assessment framework deepens in the analysis, establishing, using principal component analysis, an assessment of the state of vulnerability (SV) at a given time [11]. The higher the relationship, the more vulnerable the entity considered will be.…”
Section: Urban Vulnerability Assessment Frameworkmentioning
confidence: 99%
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