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Fake news detection tool (FNDT): Shield against sentimental deception

机译:假新闻检测工具(FNDT):防止感伤性欺骗

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摘要

Fake news detection is an evolving area of research nowadays. This area involves quite a lot of research due to inadequacy of available resources. The problem of fake news is causing a detrimental effect on society. Because of bad societal effects due to false information, its detection has attracted increasing attention. We have presented a Fake News Detection Tool (FNDT) using various Natural Language Processing and Machine Learning techniques. Our proposed tool is based on feature selection approaches: Bag of Words and TF-IDF.We have investigated and compared the performance of different classification algorithms using these approaches. For implementation purposes, we have taken a standard LIAR dataset. The results have shown that the Random Forest classifier results out to be most fitting and has an F1 score metric value of 0.703 by using the Bag of Words approach. The Naive Bayes classifier has performed the best and has an F1 score metric value of 0.723 by using the TF-IDF approach.
机译:假新闻检测是现在是一个不断发展的研究领域。由于可用资源不足,该地区涉及了很多研究。假新闻的问题导致对社会的不利影响。由于由于虚假信息由于虚假信息,其检测引起了不断的关注。我们使用各种自然语言处理和机器学习技术提出了假新闻检测工具(FNDT)。我们所提出的工具基于特征选择方法:单词和TF-IDF.WE调查并使用这些方法进行了不同分类算法的性能。出于实施目的,我们采取了标准骗子数据集。结果表明,随机森林分类器使得最拟合的拟合,并且通过使用单词方法袋具有0.703的F1得分度量值。 Naive Bayes Classifier使用TF-IDF方法表现最佳,并具有0.723的F1计数度量值。

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