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首页> 外文期刊>International Journal of Social Network Mining >Fuzzy soft set decision-making model for social networking sites
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Fuzzy soft set decision-making model for social networking sites

机译:社交网站的模糊软集决策模型

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The 'social media' has become synonymous of today's generation. Approximately two third of Indians online spend time on different social networking sites like Face book, Twitter, You Tube, Whatsapp, Ozone, Google+, Snap chat, Interest, etc. Interaction, live chat, status updates, image- as well as video-sharing are few of the major aspects that play a role in the popularity of social media. This popularity provides an opportunity to study and analyse the characteristics of online social network graphs at large scale. Understanding these graphs is important to improve current systems and to design new means to determine them by important parameters such as; security, reliability, value added features, connectivity to other online social networks, etc. Hence, social network analysis (SNA) is becoming a vital tool for researchers, but all the necessary information is often available in a distributed environment. This paper presents fuzzy soft set decision-making model, which gives a new hypothesis for determining the popular social networking sites by involving significant parameters. The model has applied fuzzy soft set theory on 14 significant parameters to predict the popularity of social networking sites. The experimental result shows that the ASS decision-making model provides a new algorithm which is to determine the most popular networking site.
机译:“社交媒体”已成为当今这一代人的代名词。大约三分之二的印度人在线时间都花在了不同的社交网站上,例如Face book,Twitter,You Tube,Whatsapp,Ozone,Google +,Snap聊天,兴趣等。互动,实时聊天,状态更新,图像以及视频,共享是在社交媒体流行中起作用的几个主要方面。这种流行度提供了一个机会来大规模研究和分析在线社交网络图的特征。了解这些图形对于改进当前系统和设计新的方法以通过重要参数确定它们很重要,例如;安全性,可靠性,增值功能,与其他在线社交网络的连接性等。因此,社交网络分析(SNA)成为研究人员的重要工具,但是所有必需的信息通常都可以在分布式环境中获得。本文提出了模糊软集合决策模型,为通过涉及重要参数确定流行的社交网站提供了新的假设。该模型对14个重要参数应用了模糊软集理论,以预测社交网站的受欢迎程度。实验结果表明,ASS决策模型提供了一种新算法,可以确定最受欢迎的网络站点。

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