Abstract

Due to the significant use of Arabic language in social media networks, the demand for Arabic sentiment analysis has increased rapidly. Although, numerous sentiment analysis techniques enable people to obtain valuable insights from the opinions shared on social media. However, these techniques are still in their infancy, and the Arabic sentiment analysis domain lacks a compressive survey. Therefore, this study focused on the various characteristics, State-of-the-Art, and the level of sentiment analysis along with the natural language processing applied in the Arabic sentiment analysis. Furthermore, this study also discussed the sentiment analysis of the modern standards and the dialects of Arabic languages along with various machine learning processes and a few popular algorithms. Moreover, this study adds values by critical analysis of two case studies, which displayed an extensive set of the various research communities in this field of sentiment analysis. Finally, open research challenges are investigated, with a focus on the shortage of lexicons; availability; use of Dialect Arabic (DA); lack of corpora and datasets; right to left reading and compound phrases and idioms.

Highlights

  • In the past few years, social media has become a popular and widespread network communication system, which is used by the people for sharing their comments, opinions and sentiments

  • The results indicated that the application of Support Vector Machine (SVM) and Naive Bayes (NB) algorithms could help in better detection of the polarity of the opinions, compared to the K-Nearest Neighbors (KNN) algorithm

  • We identified the State-of-the-art related to the Machine Learning (ML)-based Arabic SA and considered the existing SA techniques for the unstructured Arabic language

Read more

Summary

INTRODUCTION

In the past few years, social media has become a popular and widespread network communication system, which is used by the people for sharing their comments, opinions and sentiments. SA occurs by accessing and analysing data obtained from Social Media Networks (SMN), aiming to meet customers’ needs This topic includes many fields, like Machine Learning (ML), computational linguistics, and NLP. It was seen to be the official language in 27 countries It is used by ≈295 million people who live in North Africa and the Middle East [6]. It is one of the few languages which is spoken by the Sami family members, along with other languages like Hebrew, Aramaic (including Syriac), and Amharic.

SENTIMENT ANALYSIS TECHNIQUES
SENTIMENT ANALYSIS IN ARABIC DIALECT
FUTURE RESEARCH DIRECTION
Findings
CONCLUSION
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call