论文标题

使用Phobert-CNN和社交媒体流数据的越南仇恨和进攻性检测

Vietnamese Hate and Offensive Detection using PhoBERT-CNN and Social Media Streaming Data

论文作者

Tran, Khanh Q., Nguyen, An T., Hoang, Phu Gia, Luu, Canh Duc, Do, Trong-Hop, Van Nguyen, Kiet

论文摘要

社会需要开发一个系统来检测仇恨和犯罪以建立健康,安全的环境。但是,该领域的当前研究仍然面临四个主要缺点,包括缺乏预处理技术,对数据不平衡问题的冷漠,适度的绩效模型以及缺乏实际应用。本文着重于开发能够解决这些缺点的智能系统。首先,我们提出了一种有效的预处理技术,以清洁从越南社交媒体收集的评论。其次,提出了一种新型的仇恨言论检测(HSD)模型,该模型是预先训练的Phobert模型和文本CNN模型的组合,用于解决越南语中的任务。第三,EDA技术用于处理不平衡数据以提高分类模型的性能。此外,进行了各种实验作为基准,以比较和研究所提出的模型的性能与最新方法。实验结果表明,所提出的Phobert-CNN模型在两个基准数据集(VIHSD和HSD-VLSP)上分别优于SOTA方法,并达到67,46%和98,45%的F1得分。最后,我们还构建了流媒体HSD应用程序,以证明我们提出的系统的实用性。

Society needs to develop a system to detect hate and offense to build a healthy and safe environment. However, current research in this field still faces four major shortcomings, including deficient pre-processing techniques, indifference to data imbalance issues, modest performance models, and lacking practical applications. This paper focused on developing an intelligent system capable of addressing these shortcomings. Firstly, we proposed an efficient pre-processing technique to clean comments collected from Vietnamese social media. Secondly, a novel hate speech detection (HSD) model, which is the combination of a pre-trained PhoBERT model and a Text-CNN model, was proposed for solving tasks in Vietnamese. Thirdly, EDA techniques are applied to deal with imbalanced data to improve the performance of classification models. Besides, various experiments were conducted as baselines to compare and investigate the proposed model's performance against state-of-the-art methods. The experiment results show that the proposed PhoBERT-CNN model outperforms SOTA methods and achieves an F1-score of 67,46% and 98,45% on two benchmark datasets, ViHSD and HSD-VLSP, respectively. Finally, we also built a streaming HSD application to demonstrate the practicality of our proposed system.

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