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Adult Content in Social Live Streaming Services: Characterizing Deviant Users and Relationships

机译:社交直播服务中的成人内容:表征偏向用户和关系

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Social Live Stream Services (SLSS) exploit a new level of social interaction. One of the main challenges in these services is how to detect and prevent deviant behaviors that violate community guidelines. In this work, we focus on adult content production and consumption in two widely used SLSS, namely Live.me and Loops Live, which have millions of users producing massive amounts of video content on a daily basis. We use a pre-trained deep learning model to identify broadcasters of adult content. Our results indicate that moderation systems in place are highly ineffective in suspending the accounts of such users. We create two large datasets by crawling the social graphs of these platforms, which we analyze to identify characterizing traits of adult content producers and consumers, and discover interesting patterns of relationships among them, evident in both networks.
机译:社交直播服务(SLSS)开拓了社交互动的新高度。这些服务的主要挑战之一是如何检测和防止违反社区准则的异常行为。在这项工作中,我们专注于两种广泛使用的SLSS(即Live.me和Loops Live)中成人内容的生产和消费,这两种方式每天都有成千上万的用户制作大量视频内容。我们使用预先训练的深度学习模型来识别成人内容的广播公司。我们的结果表明,现有的审核系统在暂停此类用户的帐户方面非常无效。我们通过抓取这些平台的社交图来创建两个大型数据集,我们对其进行分析以识别成人内容生产者和消费者的特征,并发现它们之间有趣的关系模式,这在两个网络中都是明显的。

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