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AraSenCorpus: A Semi-Supervised Approach for Sentiment Annotation of a Large Arabic Text Corpus
Journal article   Open access  Peer reviewed

AraSenCorpus: A Semi-Supervised Approach for Sentiment Annotation of a Large Arabic Text Corpus

Ali Al-Laith, Muhammad Shahbaz, Hind F. Alaskar and Asim Rehmat
Applied sciences, Vol.11(5), p.2434
01/03/2021

Abstract

Chemistry Chemistry, Multidisciplinary Engineering Engineering, Multidisciplinary Materials Science Materials Science, Multidisciplinary Physical Sciences Physics Physics, Applied Science & Technology Technology
url
https://doi.org/10.3390/app11052434View
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