Mohammed M. AbdelgwadTaysir Hassan A. SolimanAhmed I. Taloba
Aspect-based sentiment analysis(ABSA) is a textual analysis methodology that defines the polarity of opinions on certain aspects related to specific targets. The majority of research on ABSA is in English, with a small amount of work available in Arabic. Most previous Arabic research has relied on deep learning models that depend primarily on context-independent word embeddings (e.g.word2vec), where each word has a fixed representation independent of its context. This article explores the modeling capabilities of contextual embeddings from pre-trained language models, such as BERT, and making use of sentence pair input on Arabic aspect sentiment polarity classification task. In particular, we develop a simple but effective BERT-based neural baseline to handle this task. Our BERT architecture with a simple linear classification layer surpassed the state-of-the-art works, according to the experimental results on three different Arabic datasets. Achieving an accuracy of 89.51% on the Arabic hotel reviews dataset, 73% on the Human annotated book reviews dataset, and 85.73% on the Arabic news dataset.
Mohammed M. AbdelgwadTaysir Hassan A. SolimanAhmed I. Taloba
Mohammed M. AbdelgwadTaysir Hassan A. SolimanAhmed I. Taloba
Syed ZaidAmal H. AlharbiHalima Samra
Hasna ChouikhiHamza ChniterFethi Jarray
Yufeng ZhaoEvelyn SoerjodjojoHaiying Che