利用机器学习检测假新闻并对德国报纸进行质量排名

Sandler Simone, Krauss Oliver, Diesenreiter Clara, Stöckl Andreas
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引用次数: 1

摘要

如今,新闻传播迅速,读者并不总是清楚一篇文章是真是假。此外,读者在不了解消息来源质量的情况下,只使用少数消息来源阅读新闻。这是由于缺乏最新的新闻或媒体排名。机器学习模型可以用来自动检测假新闻。在这项工作中,一个被动攻击分类器、一个随机森林和一个LSTM网络被训练来区分假新闻和非假(真实)新闻。此外,这些模型用于根据可能传播的假新闻的数量对新闻来源进行分类。模型在英语和翻译的德语文章上进行了测试。被动-攻击-分类器对英语文章的假新闻检测效果最好。对于德语翻译文章的自动新闻排名,Random-Forest提供了最好的结果。Random-Forest与实际新闻排名的相关性达到0.68。这表明,使用这种方法,自动分类可以扩展到英语以外的语言。在未来,其他机器学习模型和翻译器将用于扩展该方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Detecting Fake News and Performing Quality Ranking of German Newspapers Using Machine Learning
Nowadays, news spread quickly, and it is not always clear to the reader whether an article is real or fake. Moreover, readers use only a few sources to read the news without knowing the quality of the source. This is due to a lack of up-to-date news or media rankings. Machine learning models can be used to automatically detect fake news. In this work, a Passive-Aggressive-Classifier, a Random-Forest, and an LSTM network are trained to distinguish between fake and non-fake (real) news. Moreover, these models are used to classify news sources according to the amount of possible Fake News they may spread. The models are tested on English and translated German articles. The best results for Fake News detection on English articles is reached with the Passive-Aggressive-Classifier. For automatic news ranking of translated German articles, Random-Forest provides the best result. The correlation of Random-Forest with an actual news ranking reached 0.68. This shows that automated classification can be extended to languages other than English, using this approach. In the future, other machine learning models and translators will be used to extend the approach.
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