2021
DOI: 10.3390/app112311328
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Location Analysis for Arabic COVID-19 Twitter Data Using Enhanced Dialect Identification Models

Abstract: The recent surge of social media networks has provided a channel to gather and publish vital medical and health information. The focal role of these networks has become more prominent in periods of crisis, such as the recent pandemic of COVID-19. These social networks have been the leading platform for broadcasting health news updates, precaution instructions, and governmental procedures. They also provide an effective means for gathering public opinion and tracking breaking events and stories. To achieve loca… Show more

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Cited by 8 publications
(5 citation statements)
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References 23 publications
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“…An Arabic language dialect identification system is proposed in [36], aiming to analyze and classify COVID-19-related tweets into four Arabic dialects: Modern Standard Arabic (MSA), Egyptian, Gulf, and Levantine. In this study, BERT-based models were adopted to locate the source region of COVID-19 Arabic tweets, thus helping to monitor the epidemic outbreaks in the Arab world.…”
Section: Background and Related Workmentioning
confidence: 99%
“…An Arabic language dialect identification system is proposed in [36], aiming to analyze and classify COVID-19-related tweets into four Arabic dialects: Modern Standard Arabic (MSA), Egyptian, Gulf, and Levantine. In this study, BERT-based models were adopted to locate the source region of COVID-19 Arabic tweets, thus helping to monitor the epidemic outbreaks in the Arab world.…”
Section: Background and Related Workmentioning
confidence: 99%
“…After applying feature extraction and topic modeling, a pre-trained BERT transformer is used for disaster classification of tweets. In the same project, with a focus on multilingual data, an Arabic dialect identification model was developed based on the BERT algorithm to classify Egyptian, Gulf, Iraqi, Levantine, and Maghrebi dialects by analyzing COVID-19 Arabic conversations on the Twitter network, as published in [6]. For emergency detection and identification from the visuals, in [13], the authors identify emergency needs and responses from visual information to support the humanitarian organizations in reaching out to the affected people and specific locations with their services.…”
Section: Disaster Management Framework and Need For Information Visua...mentioning
confidence: 99%
“…This framework enables easy integration of the custom visual analytic elements needed according to the end user's requirements and type of crisis events. We have considered the preprocessed, clean, and classified disaster data (text, image, audio, and video) reported in the previous research articles [6,8,9,13] to develop the interactive dashboard.…”
Section: Interface Design Processmentioning
confidence: 99%
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“…However, identifying location-related keywords does not guarantee that a disaster event has occurred at the location mentioned in the tweets. Using users' location through GPS information attached to their posts is more reliable; however, the research reveals that only 1-3% of Tweets are geotagged, and relying solely on them may not provide enough data for decision-making [1,27].…”
Section: Literature Reviewmentioning
confidence: 99%