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Modeling the dynamics of hurricane evacuation decisions from twitter data: An input output hidden markov modeling approach

机译:从Twitter数据建模飓风疏散决策的动态:输入输出隐马尔可夫建模方法

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Evacuations play a critical role in saving human lives during hurricanes. But individual evacuation decision-making is a complex dynamic process, often studied using post-hurricane survey data. Alternatively, ubiquitous use of social media generates a massive amount of data that can be used to predict evacuation behavior in real time. In this paper, we present a method to infer individual evacuation behaviors (e.g., evacuation decision, timing, destination) from social media data. We develop an input output hidden Markov model (IO-HMM) to infer evacuation decisions from user tweets. To extract the underlying evacuation context from tweets, we first estimate a word2vec model from a corpus of more than 100 million tweets collected over four major hurricanes. Using input variables such as evacuation context, time to landfall, type of evacuation order, and the distance from home, the proposed model infers what activities are made by individuals, when they decide to evacuate, and where they evacuate to. To validate our results, we have created a labeled dataset from 38,256 tweets posted between September 2, 2017 and September 19, 2017 by 2,571 users from Florida during hurricane Irma. Our findings show that the proposed IO-HMM method can be useful for inferring evacuation behavior in real time from social media data. Since traditional surveys are infrequent, costly, and often performed at a post hurricane period, the proposed approach can be very useful for predicting evacuation demand as a hurricane unfolds in real time.
机译:疏散在飓风中拯救人类生活中发挥着关键作用。但个人疏散决策是一种复杂的动态过程,通常使用飓风后调查数据进行研究。或者,普遍存在的社交介质可以生成大量数据,该数据可用于实时预测疏散行为。在本文中,我们提出了一种从社交媒体数据推断各个疏散行为(例如,疏散决定,定时,目的地)的方法。我们开发一个输入输出隐马尔可夫模型(IO-HMM),以推断用户推文的疏散决策。要从推文中提取底层的疏散环境,我们首先估计超过四个主要飓风的推文的语料库中的一个词2VEC模型。使用撤离上下文等输入变量,登陆的时间,疏散顺序的类型,以及距离家庭的距离,拟议的模型是个人在他们决定撤离时的活动,以及他们撤离的地方。要验证我们的结果,我们创建了来自2017年9月2日和2017年9月19日至2017年9月19日至9月19日之间的38,256名推文的标签数据集2,571位用户来自佛罗里达州的Irma。我们的研究结果表明,所提出的IO-HMM方法对于从社交媒体数据实时推断出疏散行为。由于传统的调查很少,昂贵,并且经常在飓风期间进行昂贵,而且经常在飓风期间进行,因此该方法对于预测飓风实时展开的疏散需求非常有用。

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