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Mainstream media vs. social media for trending topic prediction - an experimental study

机译:主流媒体与社交媒体进行趋势主题预测 - 实验研究

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In the recent years, we have witnessed social networks blossom. Social networking reshaped worldwide communication significantly increased the speed of news spread, and connected the world stronger than ever. Although social networking has been such a revolutionary invention for the society, and many researchers have turned towards social media to explore trending topics, mainstream media still remains as the origin of the majority of the news discussed in social networking sites. Social stream mining to make video recommendations based on the trending topics has been an active direction in the research community. Understanding the trending topics and its impact on video sharing sites is very interesting for network traffic engineers. Quality of service can be significantly improved if we can predict what kind of video content will generate large traffic. The focus of this paper is to study which type of media, mainstream or social, can contribute better towards identifying trending topics. We present the experimental study of the story development process in mainstream and social media based on the real-world data. The study helps us properly identify which media source is more appropriate for the video recommendation and network traffic prediction systems. Through our findings, we discovered mainstream media could significantly improve the trend detection.
机译:近年来,我们目睹了社交网络开花。社交网络重塑全球沟通显着提高了新闻传播的速度,并将世界与以往任何时候一样。虽然社交网络已经成为社会的这种革命性发明,但许多研究人员都转向社交媒体来探索趋势主题,主流媒体仍然是社交网站中讨论的大多数新闻的起源。社会流挖掘以基于趋势主题制作视频建议一直是研究界的积极方向。了解网络交通工程师对视频共享网站对视频共享网站的影响非常有趣。如果我们能够预测哪种视频内容会产生大流量,则可以显着提高服务质量。本文的重点是研究哪种类型的媒体,主流或社会,可以更好地努力识别趋势主题。我们基于现实世界数据展示了主流和社交媒体故事开发过程的实验研究。该研究帮助我们正确地确定哪种媒体来源更适合视频推荐和网络流量预测系统。通过我们的研究结果,我们发现主流媒体可以显着提高趋势检测。

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