Applied Sciences, Free Full-Text

Por um escritor misterioso
Last updated 19 novembro 2024
Applied Sciences, Free Full-Text
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 location-based analysis for social media input, the location information of the users must be captured. Most of the time, this information is either missing or hidden. For some languages, such as Arabic, the users’ location can be predicted from their dialects. The Arabic language has many local dialects for most Arab countries. Natural Language Processing (NLP) techniques have provided several approaches for dialect identification. The recent advanced language models using contextual-based word representations in the continuous domain, such as BERT models, have provided significant improvement for many NLP applications. In this work, we present our efforts to use BERT-based models to improve the dialect identification of Arabic text. We show the results of the developed models to recognize the source of the Arabic country, or the Arabic region, from Twitter data. Our results show 3.4% absolute enhancement in dialect identification accuracy on the regional level over the state-of-the-art result. When we excluded the Modern Standard Arabic (MSA) set, which is formal Arabic language, we achieved 3% absolute gain in accuracy between the three major Arabic dialects over the state-of-the-art level. Finally, we applied the developed models on a recently collected resource for COVID-19 Arabic tweets to recognize the source country from the users’ tweets. We achieved a weighted average accuracy of 97.36%, which proposes a tool to be used by policymakers to support country-level disaster-related activities.
Applied Sciences, Free Full-Text
Applied Sciences, Free Full-Text, Semantic Mediation Model to Promote Improved Data Sharing Using Representation Lear…
Applied Sciences, Free Full-Text
Advanced Science - Wiley Online Library
Applied Sciences, Free Full-Text
Applied Sciences An Open Access Journal from MDPI
Applied Sciences, Free Full-Text
Help - PubMed
Applied Sciences, Free Full-Text
Applied sciences Stock Photos, Royalty Free Applied sciences Images
Applied Sciences, Free Full-Text
Free Delivery & Gift WrappingApplied Sciences, Free Full-Text, vibration at certain rpm
Applied Sciences, Free Full-Text
2023] Massive List of Thousands of Free Certificates and Badges — Class Central
Applied Sciences, Free Full-Text
Applied Sciences An Open Access Journal from MDPI
Applied Sciences, Free Full-Text
Micromachines, Free Full-Text

© 2014-2024 phtarkwa.com. All rights reserved.