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Detecting Gang-Involved Escalation on Social Media Using Context

机译:使用上下文检测社交网络上与帮派有关的升级

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Gang-involved youth in cities such as Chicago have increasingly turned to social media to post about their experiences and intents online. In some situations, when they experience the loss of a loved one. their online expression of emotion may evolve into aggression towards rival gangs and ultimately into real-world violence. In this paper, we present a novel system for detecting Aggression and Loss in social media. Our system features the use of domain-specific resources automatically derived from a large unlabeled corpus, and contextual representations of the emotional and semantic content of the user's recent tweets as well as their interactions with other users. Incorporating context in our Convolutional Neural Network (CNN) leads to a significant improvement.
机译:在芝加哥等城市,与黑帮有关的年轻人越来越多地转向社交媒体,在网上发布有关其经历和意图的信息。在某些情况下,当他们失去亲人时。他们在线表达的情感可能演变成对敌对帮派的侵略,并最终演变成现实世界中的暴力行为。在本文中,我们提出了一种用于检测社交媒体中的攻击和损失的新颖系统。我们的系统的特点是使用从大型未标记的语料库中自动获取的特定于域的资源,以及用户最近推文的情感和语义内容以及它们与其他用户的交互的上下文表示。将上下文纳入我们的卷积神经网络(CNN)会带来重大改进。

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