Prediction of human emergency behavior and their mobility following large-scale disaster

Xuan Song, Quanshi Zhang, Y. Sekimoto, R. Shibasaki
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引用次数: 171

Abstract

The frequency and intensity of natural disasters has significantly increased over the past decades and this trend is predicted to continue. Facing these possible and unexpected disasters, accurately predicting human emergency behavior and their mobility will become the critical issue for planning effective humanitarian relief, disaster management, and long-term societal reconstruction. In this paper, we build up a large human mobility database (GPS records of 1.6 million users over one year) and several different datasets to capture and analyze human emergency behavior and their mobility following the Great East Japan Earthquake and Fukushima nuclear accident. Based on our empirical analysis through these data, we find that human behavior and their mobility following large-scale disaster sometimes correlate with their mobility patterns during normal times, and are also highly impacted by their social relationship, intensity of disaster, damage level, government appointed shelters, news reporting, large population flow and etc. On the basis of these findings, we develop a model of human behavior that takes into account these factors for accurately predicting human emergency behavior and their mobility following large-scale disaster. The experimental results and validations demonstrate the efficiency of our behavior model, and suggest that human behavior and their movements during disasters may be significantly more predictable than previously thought.
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大规模灾害后人类应急行为及其流动性预测
过去几十年来,自然灾害的频率和强度大大增加,预计这一趋势将继续下去。面对这些可能和意外的灾害,准确预测人类的应急行为及其流动性将成为规划有效的人道主义救援、灾害管理和长期社会重建的关键问题。本文建立了一个大型的人类移动数据库(160万用户一年的GPS记录)和几个不同的数据集,以捕捉和分析东日本大地震和福岛核事故后的人类应急行为和流动性。通过对这些数据的实证分析,我们发现,大规模灾害后人类的行为和流动性有时与正常情况下的流动性模式相关,同时也受到社会关系、灾害强度、破坏程度、政府指定庇护所、新闻报道、大量人口流动等因素的高度影响。在这些发现的基础上,我们开发了一个人类行为模型,该模型考虑了这些因素,以准确预测大规模灾害后人类的紧急行为及其流动性。实验结果和验证证明了我们的行为模型的有效性,并表明人类的行为和他们在灾难中的行动可能比以前认为的更容易预测。
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KDD '22: The 28th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Washington, DC, USA, August 14 - 18, 2022 KDD '21: The 27th ACM SIGKDD Conference on Knowledge Discovery and Data Mining, Virtual Event, Singapore, August 14-18, 2021 Mutually Beneficial Collaborations to Broaden Participation of Hispanics in Data Science Bringing Inclusive Diversity to Data Science: Opportunities and Challenges A Causal Look at Statistical Definitions of Discrimination
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