危险事件中基于目击者的大规模Twitter数据趋势分析——以加州野火疏散为例

S. Morshed, Khandakar Mamun Ahmed, Kamar Amine, K. A. Moinuddin
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引用次数: 2

摘要

社交媒体数据在评估自然灾害或紧急情况(如野火、飓风、热带风暴等)期间的态势感知方面创造了一种范式转变。Twitter作为一种新兴的数据来源,是一个有效的创新的数字平台,可以从作为灾难事件直接或间接目击者的社交媒体用户的角度来观察趋势。本文旨在通过对twitter用户提供的第一手可信信息进行分类,收集和分析与近期加州野火相关的twitter数据,进行趋势分析。这项工作调查了最近加州野火的推文,并根据证人将其分为两类:1)直接证人和2)间接证人。收集和分析的信息可用于执法机构和人道主义组织在野火灾害期间的沟通和核实态势感知。趋势分析是一种聚合方法,包括情感分析和通过领域专家手动注释和机器学习执行的主题建模。趋势分析最终构建了细粒度分析,以评估疏散路线,并为第一手应急响应人员提供有价值的信息。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Trend Analysis of Large-Scale Twitter Data Based on Witnesses during a Hazardous Event: A Case Study on California Wildfire Evacuation
Social media data created a paradigm shift in assessing situational awareness during a natural disaster or emergencies such as wildfire, hurricane, tropical storm etc. Twitter as an emerging data source is an effective and innovative digital platform to observe trend from social media users’ perspective who are direct or indirect witnesses of the calamitous event. This paper aims to collect and analyze twitter data related to the recent wildfire in California to perform a trend analysis by classifying firsthand and credible information from Twitter users. This work investigates tweets on the recent wildfire in California and classifies them based on witnesses into two types: 1) direct witnesses and 2) indirect witnesses. The collected and analyzed information can be useful for law enforcement agencies and humanitarian organizations for communication and verification of the situational awareness during wildfire hazards. Trend analysis is an aggregated approach that includes sentimental analysis and topic modeling performed through domain-expert manual annotation and machine learning. Trend analysis ultimately builds a fine-grained analysis to assess evacuation routes and provide valuable information to the firsthand emergency responders.
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