A Review of Recent Trends in Sri Lankan Social Media Analytics Research

M. D. Sandaruwani, Dr. I.U. Hewapathirana
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Abstract

Due to industry demands and massive applications, the social media landscape is rapidly expanding. However, in Sri Lanka, analyzing social media data is still considered a young research topic. This article examines the present status of social media analytics research in Sri Lanka, highlighting selected technologies and applications and discussing their proven and future benefits. The primary goal of this research is to provide information regarding social media analytics usage in Sri Lanka and to identify shortcomings in this area. We select 45 publications published between 2013 and 2022 from the most used web-based databases, including Google Scholar, IEEE Xplore, ScienceDirect, Springer, and ResearchGate. To identify eligible papers for thorough analysis, multi-phase searches and selections are accomplished. The study also includes extensive discussions on social media platforms and the technology, tools, and techniques used in analytics. The review discovered several methodologies and tools that were utilized with social media data. Descriptive analysis, regression analysis, and text analysis were the most commonly used analysis methods, while Facebook, Twitter, YouTube, Instagram, and Viber were the most popular social media networks. Current social media analytics research were noticed in a variety of domains, including marketing, education, politics, health, social, and business.
斯里兰卡社会媒体分析研究的最新趋势综述
由于行业需求和大量应用,社交媒体领域正在迅速扩张。然而,在斯里兰卡,分析社交媒体数据仍然被认为是一个年轻的研究课题。本文考察了斯里兰卡社交媒体分析研究的现状,重点介绍了选定的技术和应用,并讨论了它们已证明的和未来的好处。本研究的主要目标是提供有关斯里兰卡社交媒体分析使用情况的信息,并确定这一领域的缺点。我们从最常用的网络数据库中选择了2013年至2022年间发表的45篇出版物,包括Google Scholar, IEEE Xplore, ScienceDirect, Springer和ResearchGate。为了确定合格的论文进行彻底的分析,完成了多阶段的搜索和选择。该研究还包括对社交媒体平台以及分析中使用的技术、工具和技巧的广泛讨论。审查发现了一些用于社交媒体数据的方法和工具。描述性分析、回归分析和文本分析是最常用的分析方法,而Facebook、Twitter、YouTube、Instagram和Viber是最受欢迎的社交媒体网络。当前的社交媒体分析研究在各个领域都得到了关注,包括营销、教育、政治、健康、社会和商业。
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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