Title of article :
Semantic Sentiment Analysis in Arabic Social Media
Author/Authors :
tartir, samir philadelphia university - department of computer science, Jordan , abdul-nabi, ibrahim philadelphia university - department of computer science, Jordan
From page :
229
To page :
233
Abstract :
Social media is a huge source of information. And is increasingly being used by governments, companies, and marketers to understand how the crowd thinks. Sentiment analysis aims to determine the attitudes of a group of people that are using one or more social media platforms with respect to a certain topic. In this paper, we propose a semantic approach to discover user attitudes and business insights from social media in Arabic, both standard and dialects. We also introduce the first version of our Arabic Sentiment Ontology (ASO) that contains different words that express feelings and how strongly these words express these feelings. We then show the usability of our approach in classifying different Twitter feeds on different topics.
Keywords :
Arabic , Sentiment , Ontology , Semantic , Social , Twitter
Journal title :
Journal Of King Saud University - Computer an‎d Information Sciences
Journal title :
Journal Of King Saud University - Computer an‎d Information Sciences
Record number :
2713747
Link To Document :
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