使用深度学习技术的斯洛伐克语假新闻检测

Klaudia Ivancová, M. Sarnovský, Viera Maslej-Krcšñáková
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引用次数: 7

摘要

近年来,假新闻的传播在网络环境中成为一个严重的问题。能够从文本中识别它们的自动方法正在被大量探索和部署在社交平台和在线媒体上。这种检测方法是基于自然语言处理和机器学习技术的结合。深度学习成为许多文本处理任务中非常流行的选择,包括假新闻检测。许多研究应用先进的深度学习模型从英语文本中检测假新闻和相关现象。本文的重点是从用斯洛伐克语写的新闻文章中检测假新闻。为了成功训练深度学习模型,我们创建了一个标记数据集,该数据集由在线新闻门户网站发布的政治新闻文章以及可疑的阴谋门户网站组成。我们使用这些数据训练了CNN和LSTM神经网络两种体系结构。使用标准分类指标对模型的性能进行了实验评估。
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Fake news detection in Slovak language using deep learning techniques
In recent years, the spreading of fake news presents a serious issue in the online environment. Automatic methods able to identify them from the text are being massively explored and deployed on social platforms and online media. Such detection methods are based on a combination of natural language processing and machine learning techniques. Deep learning became a very popular choice in many text processing tasks, fake news detection included. Numerous studies apply the advanced deep learning models to detect fake news and related phenomena from the English text. This paper focuses on the detection of fake news from the news articles written in the Slovak language. To successfully train deep learning models, we created a labelled dataset consisting of the political news articles published by online news portals as well as suspicious conspiratory portals. We trained two architectures, CNN and LSTM neural networks using this data. The performance of the models was experimentally evaluated using standard classification metrics.
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