Twitter-Based Disaster Response Using Recurrent Nets

Rabindra Lamsal, T. Kumar
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引用次数: 5

Abstract

Twitter has become the major source of data for the research community working on the social computing domain. The microblogging site receives millions of tweets every day on its platform. Earlier studies have shown that during any disaster, the frequency of tweets specific to an event grows exponentially, and these tweets, if monitored, processed, and analyzed, can contain actionable information relating to the event. However, during disasters, the number of tweets can be in the hundreds of thousands thereby necessitating the design of a semi-automated artificial intelligence-based system that can extract actionable information based on which steps can be taken for effective disaster response. This paper proposes a Twitter-based disaster response system that uses recurrent nets for training a classifier on a disaster specific tweets dataset. The proposed system would enable timely dissemination of information to various stakeholders so that timely response and proactive measures can be taken in order to reduce the severe consequences of disasters. Experimental results show that the recurrent nets outperform the traditional machine learning algorithms with regard to accuracy in classifying disaster-specific tweets.
使用循环网络的基于twitter的灾难响应
Twitter已经成为社会计算领域研究社区的主要数据来源。该微博网站每天在其平台上收到数百万条推文。早期的研究表明,在任何灾难期间,特定于事件的tweet的频率呈指数级增长,如果对这些tweet进行监控、处理和分析,则可以包含与事件相关的可操作信息。然而,在灾难期间,推文的数量可能达到数十万条,因此需要设计一个半自动化的基于人工智能的系统,该系统可以提取可操作的信息,并根据这些信息采取步骤,进行有效的灾难响应。本文提出了一种基于twitter的灾难响应系统,该系统使用循环网络在特定灾难的tweet数据集上训练分类器。拟议的系统将能够及时向各有关方面传播信息,以便能够及时作出反应并采取积极措施,减少灾害的严重后果。实验结果表明,循环网络在分类特定灾害推文的准确性方面优于传统的机器学习算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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