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社会脆弱性验证性潜变量模型的方法学挑战。

Methodological challenges to confirmatory latent variable models of social vulnerability.

作者信息

Goodman Zachary T, Stamatis Caitlin A, Stoler Justin, Emrich Christopher T, Llabre Maria M

机构信息

Department of Psychology, University of Miami, 5665 Ponce de Leon Blvd, Office 446, Coral Gables, FL 33146-0751 USA.

Department of Geography and Regional Studies, University of Miami, Coral Gables, FL USA.

出版信息

Nat Hazards (Dordr). 2021;106(3):2731-2749. doi: 10.1007/s11069-021-04563-6. Epub 2021 Feb 13.

Abstract

Socially vulnerable communities experience disproportionately negative outcomes following natural disasters and underscoring a need for well-validated measures to identify those at risk. However, questions have surfaced regarding the factor structure, internal consistency, and generalizability of social vulnerability measures. A reliance on data-driven techniques, which are susceptible to sample-specific characteristics, has likely exacerbated the difficulty generalizing social vulnerability measures across contexts. This study sought to validate previously published structures of SoVI using confirmatory factor analysis (CFA). We fit CFA models of 28 sociodemographic variables frequently used to calculate a commonly used measure, the social vulnerability index (SoVI), drawn from the American Community Survey across 4162 census tracts in Florida. Confirmatory models generally did not support theory-driven pillars of SoVI that were previously used to study vulnerability in the New York metropolitan area. Modified models and alternative SoVI factor structures also failed to fit the data. Many of the input variables displayed little to no variability, limiting their utility and explanatory power. Taken together, our results highlight the poor generalizability of SoVI across contexts, but raise several important considerations for reliability and validity, as well as issues related to source data and scale. We discuss the implications of these findings for improved theory-driven measurement of social vulnerability.

摘要

在自然灾害之后,社会弱势群体遭受的负面后果尤为严重,这凸显了需要有经过充分验证的措施来识别那些处于风险中的人群。然而,关于社会脆弱性衡量指标的因素结构、内部一致性和可推广性等问题已经浮出水面。依赖数据驱动技术(这些技术容易受到特定样本特征的影响)可能加剧了在不同背景下推广社会脆弱性衡量指标的难度。本研究旨在使用验证性因素分析(CFA)来验证先前发表的社会脆弱性指数(SoVI)结构。我们对28个社会人口统计学变量的CFA模型进行了拟合,这些变量常用于计算一个常用的衡量指标——社会脆弱性指数(SoVI),数据取自佛罗里达州4162个人口普查区的美国社区调查。验证性模型通常不支持先前用于研究纽约大都市区脆弱性的SoVI的理论驱动支柱。修改后的模型和替代的SoVI因素结构也未能拟合数据。许多输入变量几乎没有或完全没有变异性,限制了它们的效用和解释力。综合来看,我们的结果凸显了SoVI在不同背景下的可推广性较差,但提出了几个关于可靠性和有效性的重要考量,以及与源数据和规模相关的问题。我们讨论了这些发现对改进社会脆弱性的理论驱动测量的意义。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/8173/7882037/fbc0326498c2/11069_2021_4563_Fig1_HTML.jpg

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