人类影响驱动的灾害依赖性社会脆弱性量化框架:以波多黎各玛丽亚飓风为例

Wilmer Martínez, T. Carvalhaes, Petar Jevtic, T. Agami Reddy
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引用次数: 0

摘要

我们提出了一种监督学习方法,利用公开可用的面板数据,直接反映社会苦难的不同维度和表现,统计量化极端事件对弱势社区的影响程度。这些方面的表现包括自杀、药物滥用、死亡率过高、失业等。我们修改的治疗效果模型允许设定反事实基线条件,从中可以确定定量的多方面社会痛苦衡量标准。这种能力对决策者非常有利,因为他们必须分配稀缺资源来加强由若干行政单位组成的地理区域。我们的工作与基于公布的人口普查数据的综合指数(如SoVI)评估受特殊事件影响的社区的社会脆弱性的既定方法有明显的偏差。最近的学术研究指出,这种方法是临时的,没有考虑实际事件的动态,并且缺乏对变量和模型的正式验证。此外,使用代理脆弱性实现的因变量对指数进行验证是一个持续的挑战。我们详细描述了监督治疗效果方法,并使用涵盖2017年波多黎各不同城市飓风玛丽亚事件的面板数据说明了其适用性。我们的统计建模方法与众不同,因为它明确而更现实地捕捉了实际事件的社会困难,正如不同公布的面板数据指标所显示的那样。我们的方法足够灵活,以适应不同利益相关者的个人偏好,他们如何分配社会困难的不同表现形式的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Human Impacts-Driven Framework for Quantifying Disaster-Dependent Social Vulnerability: A Case Study of Hurricane Maria in Puerto Rico
We propose a supervised learning approach to statistically quantify the magnitude of extreme events on vulnerable communities using publicly available panel data directly reflective of the different dimensions and manifestations of social suffering. The manifestations along these dimensions include suicides, substance abuse, excess mortality, unemployment, and others. Our modified treatment-effect model allows counterfactual baseline conditions to be posited from which a quantitative multi-faceted measure of social suffering can be determined. This capability is greatly beneficial to policymakers who have to allocate scarce resources to strengthen a geographic region consisting of several administrative units. Our work represents a distinct deviation from the established approach of assessing social vulnerabilities of communities subject to extraordinary events that rely on composite indices (such as SoVI) based on published census data. Recent academic research points out that such approaches are ad hoc, do not consider the dynamics of actual events, and lack formal validation of the variables and models. Further, there is an ongoing challenge for indices to be validated with dependent variables that proxy realizations of vulnerability. We describe the supervised treatment-effect approach in detail and illustrate its applicability using panel data encompassing the 2017 Hurricane Maria event across various municipalities in Puerto Rico. Our statistical modeling methodology stands apart since it explicitly and more realistically captures the social hardships of the actual event as manifested by different published panel data indicators. Our methodology is flexible enough to accommodate individual preferences of different stakeholders in how they assign importance to different manifestations of social hardship.
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