Abstract

Twitter, Social Networking Site, becomes most popular microblogging service and people have started publishing data on the use of it in natural disasters. Twitter has also created the opportunities for first responders to know the critical information and work effective reactions for impacted communities. This paper introduces the tweet monitoring system to identify the messages that people updated during natural disasters into a set of information categories and provide user desired target information type automatically. In this system, classification is done at tweet level with three labels by using LibLinear classifier. This system is intended to extract the small number of informational and actionable tweets from large amounts of raw tweets on Twitter using machine learning and natural language processing (NLP). Feature extraction of this work exploited only linguistic features, sentiment lexicon based features and especially disaster lexicon based features. The monitoring system also creates disaster related corpus with new tweets collected from Twitter API and annotation is done on real time manner. The performance of this system is evaluated based on four publicly available annotated datasets. The experiments showed the classification accuracy on the proposed features set is higher than the classifier based on neural word embeddings and standard bag-of-words (BOW) models. This system automatically annotated the Myanmar_Earthquake_2016 dataset at 75% accuracy on average.

Highlights

  • Due to their ease of use and simplicity, social media platforms can provide efficient delivery of information that can give better situational awareness for emergency response

  • The rapid growth of online information services, social media and other digital format documents means that large amounts of information are becoming immediately available and readily accessible to numerous end-users

  • The proposed feature extraction model with LibLinear classifier is chosen for further annotation process for categorizing the tweets into specific frequently found information type such as infrastructure damage, dead and injuries, etc

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Summary

Introduction

Due to their ease of use and simplicity, social media platforms can provide efficient delivery of information that can give better situational awareness for emergency response. This vast amount of information can be useless or even dangerous, since its reliability is often unclear and any uncertainties can result in chaos 22. Twitter allows its subscribers to express and share short text messages, called tweets, of up to 140 characters. These tweets are used to broadcast relevant information and report news of emergency situations. The rapid growth of online information services, social media and other digital format documents means that large amounts of information are becoming immediately available and readily accessible to numerous end-users

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