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Improving situational awareness for humanitarian logistics through predictive modeling

机译:通过预测建模提高人道主义物流的情境意识

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Humanitarian aid efforts in response to natural and man-made disasters often involve complicated logistical challenges. Problems such as communication failures, damaged infrastructure, violence, looting, and corrupt officials are examples of obstacles that aid organizations face. The inability to plan relief operations during disaster situations leads to greater human suffering and wasted resources. Our team used the Global Database of Events, Location, and Tone (GDELT), a machine-coded database of international events, for all of the models described in this paper. We produced a range of predictive models for the occurrence of violence in Sudan, including time series, general logistic regression, and random forest models using both R and Apache Mahout. We also undertook a validation of the data within GDELT to confirm the event, actor, and location fields according to specific, pre-determined criteria. Our team found that, on average, 81.2 percent of the event codes in the database accurately reflected the nature of the articles. The best regression models had a mean square error (MSE) of 316.6 and the area under the receiver operating characteristic curve (AUC) was 0.868. The final random forest models had a MSE of 339.6 and AUC of 0.861. Using Mahout did not provide any significant advantages over R in the creation of these models.
机译:人道主义援助以应对自然和人为灾害的努力往往涉及复杂的后勤挑战。沟通失败,受损基础设施,暴力,掠夺和腐败官员等问题是援助组织面临的障碍的例子。无法在灾害情况下计划救济行动导致更大的人类遭受和浪费资源。我们的团队使用本文描述的所有模型,使用全球事件,位置和音调(GDELT),一个机器编码数据库的国际事件数据库。我们为苏丹的暴力产生了一系列预测模型,包括使用r和apache mahout的时间序列,通用逻辑回归和随机林模型。我们还对GDELT中的数据进行了验证,以根据具体的预先确定的标准确认事件,演员和位置字段。我们的团队发现,平均而言,数据库中的事件代码的81.2%精确地反映了文章的性质。最佳回归模型的平均方误差(MSE)为316.6,接收器操作特性曲线(AUC)下的区域为0.868。最终随机林模型的MSE为339.6和AUC的0.861。使用Mahout没有在创建这些模型中提供任何显着的优势。

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