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Partially supervised learning for radical opinion identification in hate group web forums

机译:在仇恨组网络论坛中进行部分监督学习以进行激进的意见识别

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摘要

Web forums are frequently used as platforms for the exchange of information and opinions, as well as propaganda dissemination. But online content can be misused when the information being distributed, such as radical opinions, is unsolicited or inappropriate. However, radical opinion is highly hidden and distributed in Web forums, while non-radical content is unspecific and topically more diverse. It is costly and time consuming to label a large amount of radical content (positive examples) and non-radical content (negative examples) for training classification systems. Nevertheless, it is easy to obtain large volumes of unlabeled content in Web forums. In this paper, we propose and develop a topic-sensitive partially supervised learning approach to address the difficulties in radical opinion identification in hate group Web forums. Specifically, we design a labeling heuristic to extract high quality positive examples and negative examples from unlabeled datasets. The empirical evaluation results from two large hate group Web forums suggest that our proposed approach generally outperforms the benchmark techniques and exhibits more stable performance than its counterparts.
机译:网络论坛经常用作交流信息和意见以及进行宣传的平台。但是,如果未经要求或不适当地散布诸如激进意见之类的信息,则会滥用在线内容。但是,激进的见解在Web论坛中高度隐藏和分发,而非激进的内容则没有特定性,并且在主题上更加多样化。为训练分类系统标记大量的自由基含量(正例)和非自由基含量(负例)既昂贵又耗时。但是,在Web论坛中很容易获得大量未标记的内容。在本文中,我们提出并开发了一种主题敏感的部分监督学习方法,以解决仇恨组Web论坛中激进的意见识别中的困难。具体来说,我们设计了一种标记试探法,以从未标记的数据集中提取高质量的正例和负例。来自两个大型仇恨团体Web论坛的经验评估结果表明,我们提出的方法通常优于基准技术,并且比同类方法表现出更稳定的性能。

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