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Detecting Threats of Violence in Online Discussions Using Bigrams of Important Words

机译:使用重要词语检测在线讨论中的暴力威胁

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Making violent threats towards minorities like immigrants or homosexuals is increasingly common on the Internet. We present a method to automatically detect threats of violence using machine learning. A material of 24,840 sentences from YouTube was manually annotated as violent threats or not, and was used to train and test the machine learning model. Detecting threats of violence works quit well with an error of classifying a violent sentence as not violent of about 10% when the error of classifying a non-violent sentence as violent is adjusted to 5%. The best classification performance is achieved by including features that combine specially chosen important words and the distance between those in the sentence.
机译:对移民或同性恋等少数民族的暴力威胁在互联网上越来越普遍。我们介绍了一种使用机器学习自动检测暴力威胁的方法。从YouTube的24,840句话的材料被手动被注释为暴力威胁,并且被用来训练和测试机器学习模型。检测暴力威胁的威胁在将暴力判断为暴力的误差调整为5%时,将暴力判处暴力判处暴力句子的错误差异良好。通过包括组合特殊选择的重要单词的功能和句子之间的距离来实现最佳分类性能。

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