Bazzaz Abkenar Sepideh, Haghi Kashani Mostafa, Mahdipour Ebrahim, Jameii Seyed Mahdi
Department of Computer Engineering, Science and Research Branch, Islamic Azad University, Tehran, Iran.
Department of Computer Engineering, Shahr-e-Qods Branch, Islamic Azad University, Tehran, Iran.
Telemat Inform. 2021 Mar;57:101517. doi: 10.1016/j.tele.2020.101517. Epub 2020 Oct 14.
Social Networking Services (SNSs) connect people worldwide, where they communicate through sharing contents, photos, videos, posting their first-hand opinions, comments, and following their friends. Social networks are characterized by velocity, volume, value, variety, and veracity, the 5 V's of big data. Hence, big data analytic techniques and frameworks are commonly exploited in Social Network Analysis (SNA). By the ever-increasing growth of social networks, the analysis of social data, to describe and find communication patterns among users and understand their behaviors, has attracted much attention. In this paper, we demonstrate how big data analytics meets social media, and a comprehensive review is provided on big data analytic approaches in social networks to search published studies between 2013 and August 2020, with 74 identified papers. The findings of this paper are presented in terms of main journals/conferences, yearly distributions, and the distribution of studies among publishers. Furthermore, the big data analytic approaches are classified into two main categories: Content-oriented approaches and network-oriented approaches. The main ideas, evaluation parameters, tools, evaluation methods, advantages, and disadvantages are also discussed in detail. Finally, the open challenges and future directions that are worth further investigating are discussed.
社交网络服务(SNS)将世界各地的人们联系起来,人们通过分享内容、照片、视频,发表第一手观点、评论以及关注朋友来进行交流。社交网络具有大数据的5个V特征,即速度、体量、价值、多样性和真实性。因此,大数据分析技术和框架在社交网络分析(SNA)中得到了广泛应用。随着社交网络的不断增长,对社交数据进行分析以描述和发现用户之间的交流模式并理解他们的行为,已经引起了广泛关注。在本文中,我们展示了大数据分析如何与社交媒体相结合,并对2013年至2020年8月期间社交网络中大数据分析方法的已发表研究进行了全面综述,共识别出74篇论文。本文的研究结果从主要期刊/会议、年度分布以及出版商之间的研究分布等方面进行了呈现。此外,大数据分析方法主要分为两大类:面向内容的方法和面向网络的方法。还详细讨论了主要思想、评估参数、工具、评估方法、优点和缺点。最后,讨论了值得进一步研究的开放挑战和未来方向。