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Predicting the Unpredictable - Harder than Expected

机译:预测不可预测的 - 比预期更难

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Introduction: An earthquake is a hazard that may cause urgent needs requiring international assistance. To ensure rapid funding for such needs-based humanitarian assistance, swift decisions are needed. However, data to guide needs-based funding decisions are often missing in the acute phase, causing delays. Instead, it may be feasible to use data building on existing indexes that capture hazard and vulnerability information to serve as a rapid tool to prioritize funding according to the scale of needs: needs-based funding. However, to date, it is not known to what extent the indicators in the indexes can predict the scale of disaster needs. The aim of this study was to identify predictors for the scale of disaster needs after earthquakes. Methodology: The predictive performance of vulnerability indicators and outcome indicators of four commonly used disaster risk and severity indexes were assessed, both individually and in different combinations, using linear regression. The number of people who reportedly died or who were affected was used as an outcome variable for the scale of needs, using data from the Emergency Events Database (EM-DAT) provided by the Centre for Research on the Epidemiology of Disasters at the Universite Catholique de Louvain (CRED; Brussels, Belgium) from 2007 through 2016. Root mean square error (RMSE) was used as the performance measure. Results: The assessed indicators did not predict the scale of needs. This attempt to create a multivariable model that included the indicators with the lowest RMSE did not result in any substantially improved performance. Conclusion: None of the indicators, nor any combination of the indicators, used in the four assessed indexes were able to predict the scale of needs in the assessed earthquakes with any precision.
机译:简介:地震是可能导致需要国际援助的紧急需求的危险。为确保为基于需求的人道主义援助进行快速资金,需要迅速的决定。但是,引导基于需求的资金决策的数据往往缺失急性阶段,导致延误。相反,在捕获危险和漏洞信息的现有索引上使用数据构建可能是可行的,以便根据需求规模优先考虑资金的快速工具:基于需求的资金。但是,迄今为止,索引中指标可以在多大程度上已知可以预测灾害需求的规模。本研究的目的是确定地震后灾害需求规模的预测因素。方法论:使用线性回归分别和不同组合评估四种常用灾害风险和严重程度指标的漏洞指标和结果指标的预测性能。据报告的人或受到影响的人数被用作所需数据库(EM-DAT)的需求规模的结果变量,该数据库(EM-DAT)提供了关于灾难性的灾害的流行病学研究中心de louvain(信誉; Brussels,比利时)从2007年到2016年。均均线误差(RMSE)被用作性能措施。结果:评估指标未预测需求规模。这次尝试创建一个多变量模型,其中包含最低RMSE的指示器不会导致任何显着提高的性能。结论:在四项评估指标中使用的指标和指标的任何组合都没有任何指标,可以通过任何精确度预测评估地震中需求规模。

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