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Learning to Decipher Hate Symbols

机译:学习破译仇恨符号

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Existing computational models to understand hate speech typically frame the problem as a simple classification task, bypassing the understanding of hate symbols (e.g., 14 words, kigy) and their secret connotations. In this paper, we propose a novel task of deciphering hale symbols. To do this, we leverage the Urban Dictionary and collected a new, symbol-rich Twiller corpus of hate speech. We investigate neural network latent context models for deciphering hate symbols. More specifically, we study Sequence-to-Sequence models and show how they are able to crack the ciphers based on context. Furthermore, we propose a novel Variational Decipher and show how it can generalize better to unseen hate symbols in a more challenging testing setting.
机译:现有的用于理解仇恨言论的计算模型通常将问题框架化为简单的分类任务,而绕开了对仇恨符号(例如14个单词,kigy)及其秘密含义的理解。在本文中,我们提出了破译黑尔符号的新任务。为此,我们利用《城市词典》并收集了一个新的,符号丰富的Twiller仇恨言论语料库。我们研究了用于解密仇恨符号的神经网络潜在上下文模型。更具体地说,我们研究序列到序列模型,并展示它们如何能够基于上下文破解密码。此外,我们提出了一种新颖的变体解密器,并展示了它如何在更具挑战性的测试环境中更好地推广到看不见的仇恨符号。

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