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Disaster Management and Efforts to Mitigate the Destruction of the Human-Environment.

机译:灾害管理和减轻人类环境破坏的努力。

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摘要

Natural disasters expose the fact that poverty, race, gender, and other indicators of social disadvantage are linked to the population of citizens who struggle the most to recover after a disaster, yet these factors are not accounted for in public policy that guides decision making related to federal assistance to residents affected by a disaster. This study used neural networks as a research strategy to determine whether the current policies under the Stafford Act related to assistance comply with Congressional intent and law that uses a formula for assistance distribution, and whether human factors such as culture, measured as residing in a non-white zip code according to Census tract data, are considered in decision making regarding assistance. Data from FEMA related to the recovery from Hurricane Irene in 2011 were used as the basis for the model. The neural network analysis of this study indicated that federal assistance decisions after the Hurricane Irene event tended to focus on the adjusted property value and actual dollar value of losses as the determining factor in decisions. Focusing on the actual dollar value of losses is consistent with the formulaic approach codified in public law, but this approach overshadows important human factors such as living in a primarily non-white zip code and the availability of temporary housing. This study underscores the notion that the public policy works the way it is intended, but it fails to accommodate human and social factors. As a consequence, the existing policy is legally equitable, but it is not necessarily morally fair to those impacted by disasters. The positive social change implications of this study include recommendations to federal policy makers to more equitably structure recovery efforts in alignment with the human environment of communities rather than a primary focus on cost and value of real property.
机译:自然灾害暴露了这样一个事实,即贫困,种族,性别和其他社会不利指标与灾难后最难恢复的公民人口有关,但指导决策相关的公共政策并未考虑这些因素。向受灾居民提供联邦援助。这项研究使用神经网络作为研究策略,以确定《斯塔福德法案》下与援助有关的当前政策是否符合国会意图和使用援助分配公式的法律,以及诸如文化等人为因素是否定居于非居民之中。在制定有关援助的决策时,应考虑根据人口普查数据提供的白色邮政编码。来自FEMA的与2011年飓风艾琳的恢复相关的数据被用作该模型的基础。这项研究的神经网络分析表明,飓风“艾琳”事件发生后的联邦援助决策倾向于将调整后的财产价值和实际损失美元价值作为决策的决定因素。关注损失的实际美元价值与公法中编纂的公式化方法相一致,但是这种方法使重要的人为因素(例如主要居住在非白色邮政编码区域和提供临时住房)蒙上了阴影。这项研究强调了以下观点:公共政策按照预期的方式起作用,但不能容纳人为和社会因素。结果,现行政策在法律上是公平的,但对于受灾难影响的政策在道德上不一定公平。这项研究对社会变革的积极意义包括建议联邦决策者根据社区的人类环境更公平地组织恢复工作,而不是主要关注房地产的成本和价值。

著录项

  • 作者

    Bell, Dorothy Henderson.;

  • 作者单位

    Walden University.;

  • 授予单位 Walden University.;
  • 学科 Public policy.;Social research.
  • 学位 Ph.D.
  • 年度 2015
  • 页码 105 p.
  • 总页数 105
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类 建筑科学;
  • 关键词

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