Keywords
Opinion miningSocial Network
sentiment analysis
support vector machines
Arabic slang comments
slang sentimental words and idioms lexicon
microblogs.
Science
Q
Mathematics
QA1-939
Instruments and machines
QA71-90
Electronic computers. Computer science
QA75.5-76.95
Science
Q
Mathematics
QA1-939
Instruments and machines
QA71-90
Electronic computers. Computer science
QA75.5-76.95
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Show full item recordAbstract
<p class="Abstract">Social networks have become one of our daily life activities not only in socializing but in e-commerce, e-learning, and politics. However, they have more effect on the youth generation all over the world, specifically in the Middle East. Arabic slang language is widely used on social networks more than classical Arabic since most of the users of social networks are young-mid age. However, Arabic slang language suffers from the new expressive (opinion) words and idioms as well as the unstructured format. Mining Arabic slang language requires efficient techniques to extract youth opinions on various issues, such as news websites. In this paper, we constructed a Slang Sentimental Words and Idioms Lexicon (SSWIL) of opinion words is built. In addition, we propose a Gaussian kernel SVM classifier for Arabic slang language to classify Arabic news’ comments on Facebook. To test the performance of the proposed classifier, several Facebook news’ comments are used, where 86.86% accuracy rate is obtained with precision 88.63 and recall 78.</p>Date
2014-01-01Type
ArticleIdentifier
oai:doaj.org/article:c922914cf6b14f8caef20dff47e51c102277-3061
https://doaj.org/article/c922914cf6b14f8caef20dff47e51c10