Toxicity Detection Using State of the Art Natural Language Methodologies

Enes Faruk Keskin, Erkut Açikgöz, Gulustan Dogan
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Abstract

In this paper, the studies carried out to detect objectionable expressions in any text will be explained. Experiments were performed with Sentence transformers, supervised machine learning algorithms, and Bert transformer architecture trained in English, and the results were observed. To prepare the dataset used in the experiments, the natural language processing and machine learning methodologies of the toxic and non-toxic contents in the labeled text data obtained from the Kaggle platform are explained, and then the methods and performances of the models trained using this dataset are summarized in this paper.
使用最先进的自然语言方法进行毒性检测
在本文中,将解释为检测任何文本中的令人反感的表达而进行的研究。使用英语训练的句子转换器、监督机器学习算法和Bert转换器架构进行实验,并观察结果。为了准备实验数据集,本文首先阐述了从Kaggle平台获取的标记文本数据中有毒和无毒内容的自然语言处理和机器学习方法,然后总结了使用该数据集训练的模型的方法和性能。
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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