A comparative study on opinion mining algorithms of social media statuses

Gamal, Donia; Alfonse, Marco; El-Sayed M. El-Horbaty; Salem A.;

Abstract


The Social Media (SM) is affecting clients' preferences by modeling their thoughts, attitudes, opinions, views and public mood. Observing the SM activities is a decent approach to measure clients' loyalty, keeping a track on their opinion towards products preferences or social event. Opinion Mining (OM) is the most rising research field of text mining using Machine Learning (ML) algorithms and Natural Language Processing (NLP). Several algorithms such as Support Vector Machines (SVM), Naïve Bayes (NB) and Maximum Entropy (ME), were utilized to extract information that differentiates the user's opinion whether it's positive, negative or neutral. User's opinions and reviews are very beneficial information for individuals, businesses, and governments. In this paper, we compare the intelligent algorithms, which are utilized for OM in SM data over the last five years. The results show that using SVM with Part Of Speech (POS) or POS, Unigram and Bigram with J48 accomplish Sentiment Classification (SC) accuracy 92%.


Other data

Title A comparative study on opinion mining algorithms of social media statuses
Authors Gamal, Donia ; Alfonse, Marco ; El-Sayed M. El-Horbaty ; Salem A. 
Keywords Facebook;Machine Learning;Natural Language Processing;Opinion Mining;Sentiment Classification;Social Media Mining;Twitter
Issue Date 1-Jul-2017
Conference 2017 IEEE 8th International Conference on Intelligent Computing and Information Systems, ICICIS 2017 
ISBN 9772371723
DOI 10.1109/INTELCIS.2017.8260067
Scopus ID 2-s2.0-85047084884

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