Earthquakes have a deep impact on wide areas, and emergency rescue operations may benefit from social media information about the scope and extent of the disaster. Therefore, this work presents a text miningbased approach to collect and analyze social media data for early earthquake impact analysis. First, disasterrelated microblogs are collected from the Sina microblog based on crawler technology. Then, after data cleaning a series of analyses are conducted including (1) the hot words analysis, (2) the trend of the number of microblogs, (3) the trend of public opinion sentiment, and (4) a keyword and rule-based text classification for earthquake impact analysis. Finally, two recent earthquakes with the same magnitude and focal depth in China are analyzed to compare their impacts. The results show that the public opinion trend analysis and the trend of public opinion sentiment can estimate the earthquake's social impact at an early stage, which will be helpful to decision-making and rescue management.
翻译:地震对大面积地区具有深刻影响,紧急救援行动可能受益于社交媒体关于灾害范围和范围的信息,因此,这项工作提出了一种基于文字的采矿方法,用于收集和分析社交媒体数据,用于早期地震影响分析;首先,根据爬行技术,从Sina微博收集与灾害有关的微博客;然后,在数据清理后进行了一系列分析,包括:(1) 热词分析;(2) 微博数量的趋势;(3) 舆论情绪趋势;(4) 地震影响分析的关键词和基于规则的文字分类;最后,对中国最近两次规模和中心深度相同的地震进行了分析,以比较其影响;结果显示,公众舆论趋势分析和公众舆论情绪趋势趋势可在早期阶段估计地震的社会影响,这将有助于决策和救援管理。