Evaluating Social Context in Arabic Opinion Mining

Evaluating Social Context in Arabic Opinion Mining

Mohammed Al-Kabi1, Izzat Alsmadi2, Rawan Khasawneh3, and Heider Wahsheh4

1Computer Science Department, Zarqa University, Jordan

2Computer Science Department, University of New Haven, USA

3Computer Information Systems Department, Jordan University of Science and Technology, Jordan

4Computer Science Department, King Khaled University, Saudi Arabia

Abstract: This study is based on a benchmark corpora consisting of 3,015 textual Arabic opinions collected from Facebook. These collected Arabic opinions are distributed equally among three domains (Food, Sport, and Weather), to create a balanced benchmark corpus. To accomplish this study ten Arabic lexicons were constructed manually, and a new tool called Arabic Opinions Polarity Identification (AOPI) is designed and implemented to identify the polarity of the collected Arabic opinions using the constructed lexicons. Furthermore, this study includes a comparison between the constructed tool and two free online sentiment analysis tools (SocialMention and SentiStrength) that support the Arabic language. The effect of stemming on the accuracy of these tools is tested in this study. The evaluation results using machine learning classifiers show that AOPI is more effective than the other two free online sentiment analysis tools using a stemmed dataset.

Keywords: Big data, social networks, sentiment analysis, Arabic text classification, and analysis, opinion mining.

Received November 20, 2015; accepted March 30, 2016
  
Read 1043 times
Share
Top
We use cookies to improve our website. By continuing to use this website, you are giving consent to cookies being used. More details…