TY - JOUR
T1 - MSG-ATS
T2 - Multi-Level Semantic Graph for Arabic Text Summarization
AU - Salam, Mustafa Abdul
AU - Aldawsari, Mohamed
AU - Gamal, Mostafa
AU - Hamed, Hesham F.A.
AU - Sweidan, Sara
N1 - Publisher Copyright:
© 2013 IEEE.
PY - 2024
Y1 - 2024
N2 - Arabic language processing presents significant challenges due to its complex linguistic patterns and shortage of resources. This study describes MSG-ATS, a new technique to abstractive text summarization in Arabic that aims to overcome these issues. The key challenge is producing coherent and high-quality summaries given the Arabic language's rich syntactic, semantic, and contextual elements. Traditional approaches, such as word2vec, frequently fail to capture these subtleties well. MSG-ATS uses multilevel semantic graphs and deep learning techniques to create a more thorough representation of Arabic text. This approach improves traditional text generation and embedding approaches by collecting syntactic, semantic, and contextual information fully. MSG-ATS uses a deep neural network to create high-quality summaries that are coherent and contextually appropriate. To verify MSG-ATS, we performed rigorous assessments that compared its performance to word2vec, a fundamental word embedding approach. These assessments employed a unique dataset created expressly for this study and included automated assessment using the ROUGE measure. The results are compelling: MSG-ATS outperformed the baseline model by 42.4% in precision, 23.8% in recall, and 38.3% overall. The outcomes of this study highlight MSG-ATS's potential to considerably increase Arabic text summarization by providing a strong framework that solves the constraints of existing models while also laying the groundwork for future developments in the area.
AB - Arabic language processing presents significant challenges due to its complex linguistic patterns and shortage of resources. This study describes MSG-ATS, a new technique to abstractive text summarization in Arabic that aims to overcome these issues. The key challenge is producing coherent and high-quality summaries given the Arabic language's rich syntactic, semantic, and contextual elements. Traditional approaches, such as word2vec, frequently fail to capture these subtleties well. MSG-ATS uses multilevel semantic graphs and deep learning techniques to create a more thorough representation of Arabic text. This approach improves traditional text generation and embedding approaches by collecting syntactic, semantic, and contextual information fully. MSG-ATS uses a deep neural network to create high-quality summaries that are coherent and contextually appropriate. To verify MSG-ATS, we performed rigorous assessments that compared its performance to word2vec, a fundamental word embedding approach. These assessments employed a unique dataset created expressly for this study and included automated assessment using the ROUGE measure. The results are compelling: MSG-ATS outperformed the baseline model by 42.4% in precision, 23.8% in recall, and 38.3% overall. The outcomes of this study highlight MSG-ATS's potential to considerably increase Arabic text summarization by providing a strong framework that solves the constraints of existing models while also laying the groundwork for future developments in the area.
KW - Automatic text summarization
KW - attention mechanisms
KW - graph neural networks
KW - multi-level semantic graph
KW - semantic graph embedding
UR - http://www.scopus.com/inward/record.url?scp=85200813948&partnerID=8YFLogxK
U2 - 10.1109/ACCESS.2024.3441489
DO - 10.1109/ACCESS.2024.3441489
M3 - Article
AN - SCOPUS:85200813948
SN - 2169-3536
VL - 12
SP - 118773
EP - 118784
JO - IEEE Access
JF - IEEE Access
ER -