Enhanced Arabic disaster data classification using domain adaptation

Author:

Moussa Abdullah M.ORCID,Abdou Sherif,Elsayed Khaled M.,Rashwan Mohsen,Asif AmnaORCID,Khatoon ShaheenORCID,Alshamari Majed A.

Abstract

Natural disasters, like pandemics and earthquakes, are some of the main causes of distress and casualties. Governmental crisis management processes are crucial when dealing with these types of problems. Social media platforms are among the main sources of information regarding current events and public opinion. So, they have been used extensively to aid disaster detection and prevention efforts. Therefore, there is always a need for better automatic systems that can detect and classify disaster data of social media. In this work, we propose enhanced Arabic disaster data classification models. The suggested models utilize domain adaptation to provide state-of-the-art accuracy. We used a standard dataset of Arabic disaster data collected from Twitter for testing the proposed models. Experimental results show that the provided models significantly outperform the previous state-of-the-art results.

Funder

Saudi Arabian Ministry of Education’s Deputyship for Research and Innovation

Publisher

Public Library of Science (PLoS)

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