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Big data analytics for disaster response and recovery through sentiment analysis

机译:大数据分析,通过情绪分析实现灾难响应和恢复

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摘要

Big data created by social media and mobile networks provide an exceptional opportunity to mine valuable insights from them. This information is harnessed by business entities to measure the level of customer satisfaction but its application in disaster response is still in its inflection point. Social networks are increasingly used for emergency communications and help related requests. During disaster situations, such emergency requests need to be mined from the pool of big data for providing timely help. Though government organizations and emergency responders work together through their respective national disaster response framework, the sentiment of the affected people during and after the disaster determines the success of the disaster response and recovery process. In this paper, we propose a big data driven approach for disaster response through sentiment analysis. The proposed model collects disaster data from social networks and categorize them according to the needs of the affected people. The categorized disaster data are classified through machine learning algorithm for analyzing the sentiment of the people. Various features like, parts of speech and lexicon are analyzed to identify the best classification strategy for disaster data. The results show that lexicon based approach is suitable for analyzing the needs of the people during disaster. The practical implication of the proposed methodology is the real- time categorization and classification of social media big data for disaster response and recovery. This analysis helps the emergency responders and rescue personnel to develop better strategies for effective information management of the rapidly changing disaster environment.
机译:社交媒体和移动网络创建的大数据提供了一个难得的机会,可以从中挖掘有价值的见解。业务实体可以利用此信息来衡量客户满意度的水平,但是其在灾难响应中的应用仍然处于拐点。社交网络越来越多地用于紧急通信和帮助相关请求。在灾难情况下,需要从大数据池中挖掘此类紧急请求,以提供及时的帮助。尽管政府组织和应急人员通过各自的国家灾难响应框架进行合作,但灾难期间和灾后受影响人群的情绪决定了灾难响应和恢复过程的成功。在本文中,我们通过情感分析提出了一种大数据驱动的灾难响应方法。所提出的模型从社交网络收集灾难数据,并根据受影响人群的需求对其进行分类。通过机器学习算法对分类的灾难数据进行分类,以分析人们的情绪。分析各种功能,例如词性和词典,以识别灾难数据的最佳分类策略。结果表明,基于词典的方法适用于分析灾民的需求。拟议方法的实际含义是针对灾难响应和恢复的社交媒体大数据的实时分类和分类。该分析有助于应急人员和救援人员制定更好的策略,以对迅速变化的灾难环境进行有效的信息管理。

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