Sentiment Analysis of Arabic Tweets in Smart Cities: A Review of Saudi Dialect

Shoayee Alotaibi, Rashid Mehmood, Iyad A. Katib
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引用次数: 17

Abstract

Social media including Twitter have transformed our societies and has become an important pulse of smart societies by sensing the information about the people and their experiences across space and time around the living spaces. This has allowed connecting with people, sensing their feelings and behaviors, and measuring the performance of various city systems such as healthcare and transport. The sentiment analysis of social media is a key step in this process. As of January 2019, Saudi Arabia had the fourth highest number of Twitter users in the world, after the US, Japan, and the UK. However, the works done on sentiment analysis in the Arabic language are limited in their scope and depth. Moreover, little is available in the literature on sentiment analysis in the Arabic and Saudi dialects. This paper aims to provide a resource on the sentiment analysis in the Arabic and Saudi dialects. It reviews the relevant tools and techniques considering their accuracy. We hope that this paper will be a useful guide for the researchers who are interested in the sentiment analysis of the Arabic and the Saudi dialects.
智慧城市中阿拉伯语推文的情感分析:对沙特方言的回顾
包括Twitter在内的社交媒体通过感知人们的信息和他们在生活空间周围的空间和时间的经历,改变了我们的社会,成为智能社会的重要脉搏。这使得人们能够与人联系,感知他们的感受和行为,并衡量各种城市系统(如医疗保健和交通)的性能。社交媒体的情感分析是这一过程中的关键一步。截至2019年1月,沙特阿拉伯的推特用户数量位居世界第四,仅次于美国、日本和英国。然而,在阿拉伯语情感分析方面所做的工作在广度和深度上都是有限的。此外,关于阿拉伯语和沙特语方言的情感分析文献很少。本文旨在为阿拉伯语和沙特语方言的情感分析提供参考。它回顾了相关的工具和技术,考虑到它们的准确性。希望本文能对研究阿拉伯语和沙特语方言情感分析的学者有所帮助。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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