基于任务知识的基于词典的越南语仇恨言语检测方法

Suong N. Hoang, Binh Duc Nguyen, Nam-Phong Nguyen, Son T. Luu, Hieu T. Phan, H. Nguyen
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引用次数: 0

摘要

社交媒体上自由文本内容的爆炸式增长带来了仇恨言论的指数级传播。在Facebook、抖音和Twitter等许多流行平台的社区指导方针中,仇恨言论的定义是明确的,在这些平台上,任何针对未成年人、受保护群体的传播都被视为仇恨内容。本文首先指出了越南仇恨言论(VHS)数据集中恶意用户的复杂文字游戏。为了提高模型的泛化性,提出了训练过程中的中心损失来消除基于任务的句子嵌入的歧义。此外,我们还提出了一种基于任务的词汇注意池方法来突出词汇级信息,并将其结合到句子嵌入中。实验结果表明,该方法提高了ViHSD数据集的F1分数,而训练时间和推理速度没有显著变化。
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Enhanced Task-based Knowledge for Lexicon-based Approach in Vietnamese Hate Speech Detection
The explosion of free-text content on social media has brought the exponential propagation of hate speech. The definition of hate speech is well-defined in the community guidelines of many popular platforms such as Facebook, Tiktok, and Twitter, where any communication judges towards the minor, protected groups are considered hateful content. This paper first points out the sophisticated word-play of malicious users in a Vietnamese Hate Speech (VHS) Dataset. The Center Loss in the training process to disambiguate the task-based sentence embedding is proposed for improving generalizations of the model. Moreover, a task-based lexical attention pooling is also proposed to highlight lexicon-level information and then combined into sentence embedding. The experimental results show that the proposed method improves the F1 score in the ViHSD dataset, while the training time and inference speed are insignificantly changed.
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