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Examining Vulnerability Factors to Natural Disasters with a Spatial Autoregressive Model: The Case of South Korea

Author(s)
Jeong, SeunghooYoon, D. K.
Issued Date
2018-05
DOI
10.3390/su10051651
URI
https://scholarworks.unist.ac.kr/handle/201301/24407
Fulltext
http://www.mdpi.com/2071-1050/10/5/1651
Citation
SUSTAINABILITY, v.10, no.5, pp.1651
Abstract
Socially and economically marginalized people and environmentally vulnerable areas are disproportionately affected by natural hazards. Identifying populations and places vulnerable to disasters is important for disaster management, and crucial for mitigating their economic consequences. From the fields of geography, emergency management, and urban planning, several approaches and methodologies have been used to identify significant vulnerability factors affecting the incidence and impact of disasters. This study performs a regression analysis to examine several factors associated with disaster damage in 230 local communities in South Korea, using ten vulnerability indicators for social, economic, and environmental aspects, and a single indicator for disaster characteristics. A Lagrange Multiplier diagnostic test-based spatial autoregressive model (SAM) was applied to assess the potential spatial autocorrelation in the ordinary least squares (OLS) residuals. This study compared the OLS regression results with those of a spatial autoregressive model, for both presence of spatial autocorrelation, and model performance. The conclusion of this study is that Korean communities with a higher vulnerability to disasters, as a result of their socioeconomic and environmental characteristics, are more likely to experience economic losses from natural disasters.
Publisher
MDPI
ISSN
2071-1050
Keyword (Author)
natural disastersvulnerabilityspatial autoregressive model (SAM)South Korea
Keyword
SOCIAL VULNERABILITYECONOMIC VULNERABILITYBUILT ENVIRONMENTHAZARDSFLOODTEXASIMPACTCHINAPOPULATIONFLORIDA

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