Toxic Comment Identification and Classification using BERT and SVM

Ivander Gladwin, Evan Vitto Renjiro, Bryan Valerian, Ivan Sebastian Edbert, Derwin Suhartono
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Abstract

Bullying cases like toxic comments on many social media platforms cause a negative impact that occurs in every age circles. From those cases, we would like to make a system that can identify and classify toxic words from a comment before it is sent and seen by others. By utilizing a Machine Learning application, hopefully, the produced system can be useful in reducing bullying cases that are many in social media. Lot of experiments have been done to find the settlement for this problem, but various algorithms and models are used. In this research, we will be doing a comparison of two models, the BERT (Bidirectional Encoder Representations from Transformers) model which is usually used to solve NLP (Natural Language Processing) tasks, and SVM (Support Vector Machine) model which is great at classifying. Both models will be compared to find out which model is better in identifying and classifying toxic comments. The result that is gotten shows that BERT model is said to be superior compared to SVM model, with an accuracy of 98.3% including other metric evaluation scores that show a significant result compared to the result achieved by SVM model.
基于BERT和SVM的有毒评论识别与分类
许多社交媒体平台上的有毒评论等欺凌案件会造成负面影响,在每个年龄段都会发生。从这些案例中,我们想要建立一个系统,可以在评论被其他人发送和看到之前,从评论中识别和分类有毒词汇。希望通过使用机器学习应用程序,生成的系统可以用于减少社交媒体上的许多欺凌案件。为了解决这个问题,已经做了大量的实验,但使用了各种各样的算法和模型。在本研究中,我们将对两个模型进行比较,通常用于解决NLP(自然语言处理)任务的BERT(双向编码器表示)模型和擅长分类的SVM(支持向量机)模型。将比较两种模型,以找出哪种模型在识别和分类有毒评论方面更好。得到的结果表明,BERT模型优于SVM模型,包括其他指标评价分数在内的准确率为98.3%,与SVM模型的结果相比,结果显着。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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