论文标题

解除武装:检测有害模因针对的受害者

DISARM: Detecting the Victims Targeted by Harmful Memes

论文作者

Sharma, Shivam, Akhtar, Md. Shad, Nakov, Preslav, Chakraborty, Tanmoy

论文摘要

互联网模因已成为越来越流行的网络交流手段。尽管通常打算引起幽默感,但它们越来越多地用于传播仇恨,拖曳和网络欺凌,以及针对政治,社会文化和心理基础的特定个人,社区或社会的目标。尽管以前的工作重点是检测有害,仇恨和进攻性模因,但确定他们攻击的人仍然是一个具有挑战性且毫无疑问的领域。在这里,我们旨在弥合这一差距。特别是,我们创建了一个数据集,在该数据集中,我们将每个模因注释其受害者,例如目标人的名称,组织和社区(IES)。然后,我们提出解除武装(检测有害模因针对的受害者),该框架使用指定的实体识别和人识别来检测模因所指的所有实体,然后将新颖的上下文化的多模态深神经网络纳入模因是否打算损害这些实体。我们对三个测试设置进行了几个系统的实验,这些实验对应于(a)训练时所有的实体,(b)在训练中没有被视为有害目标,以及(c)在训练中根本看不到。评估结果表明,解除武装明显优于十个单峰和多模式系统。最后,我们表明解除武装是可解释的,并且相对更具概括性,并且可以在几个强大的多模式竞争对手上将有害目标识别的相对错误率最多减少9分。

Internet memes have emerged as an increasingly popular means of communication on the Web. Although typically intended to elicit humour, they have been increasingly used to spread hatred, trolling, and cyberbullying, as well as to target specific individuals, communities, or society on political, socio-cultural, and psychological grounds. While previous work has focused on detecting harmful, hateful, and offensive memes, identifying whom they attack remains a challenging and underexplored area. Here we aim to bridge this gap. In particular, we create a dataset where we annotate each meme with its victim(s) such as the name of the targeted person(s), organization(s), and community(ies). We then propose DISARM (Detecting vIctimS targeted by hARmful Memes), a framework that uses named entity recognition and person identification to detect all entities a meme is referring to, and then, incorporates a novel contextualized multimodal deep neural network to classify whether the meme intends to harm these entities. We perform several systematic experiments on three test setups, corresponding to entities that are (a) all seen while training, (b) not seen as a harmful target on training, and (c) not seen at all on training. The evaluation results show that DISARM significantly outperforms ten unimodal and multimodal systems. Finally, we show that DISARM is interpretable and comparatively more generalizable and that it can reduce the relative error rate for harmful target identification by up to 9 points absolute over several strong multimodal rivals.

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