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Language-Independent Fake News Detection: English, Portuguese, and Spanish Mutual Features

机译:独立式假新闻检测:英语,葡萄牙语和西班牙语相互特征

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Online Social Media (OSM) have been substantially transforming the process of spreading news, improving its speed, and reducing barriers toward reaching out to a broad audience. However, OSM are very limited in providing mechanisms to check the credibility of news propagated through their structure. The majority of studies on automatic fake news detection are restricted to English documents, with few works evaluating other languages, and none comparing language-independent characteristics. Moreover, the spreading of deceptive news tends to be a worldwide problem; therefore, this work evaluates textual features that are not tied to a specific language when describing textual data for detecting news. Corpora of news written in American English, Brazilian Portuguese, and Spanish were explored to study complexity, stylometric, and psychological text features. The extracted features support the detection of fake, legitimate, and satirical news. We compared four machine learning algorithms (k-Nearest Neighbors ( k -NN), Support Vector Machine (SVM), Random Forest (RF), and Extreme Gradient Boosting (XGB)) to induce the detection model. Results show our proposed language-independent features are successful in describing fake, satirical, and legitimate news across three different languages, with an average detection accuracy of 85.3% with RF.
机译:在线社交媒体(OSM)基本上转变了传播新闻,提高其速度的过程,降低了向广泛的受众达到了障碍。然而,OSM在提供检查通过其结构传播的消息的可信度的机制非常有限。大多数关于自动假新闻检测的研究仅限于英语文件,几乎没有作品评估其他语言,没有比较语言无关的特征。此外,欺骗性新闻的传播往往是一个全世界的问题;因此,在描述用于检测新闻的文本数据时,这项工作评估了没有与特定语言相关联的文本功能。探讨了用美国英语,巴西葡萄牙语和西班牙语编写的新闻的公司,以研究复杂性,款式和心理文本特征。提取的功能支持假,合法和讽刺新闻的检测。我们比较了四种机器学习算法(K-CORMALE邻居(K-NN),支持向量机(SVM),随机林(RF)和极端梯度升压(XGB)),以诱导检测模型。结果表明我们拟议的语言无关功能是成功描述三种不同语言的假,讽刺和合法的新闻,平均检测精度为85.3%,RF。

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