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首页> 外文期刊>Journal of computational and theoretical nanoscience >An Innovative and Implementable Approach for Online Fake News Detection Through Machine Learning
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An Innovative and Implementable Approach for Online Fake News Detection Through Machine Learning

机译:通过机器学习的在线假新闻检测的创新和可实现方法

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摘要

One should recollect the USA 2015 and 2016 U.S. presidential election cycle dealt with numerous scandals which were triggered by the forged news articles that blowout through the social media like Twitter and Facebook. When it was found that these articles were purposefully uploaded for financial and political gain, it's become evident that bogus news has to be identified and removed to prevent public from being deceived for someone's personal gain. This study builds a supervised machine language model to detect the fake news articles published during 2015 and 2016 U.S. election cycle. The data set contains identical number of bogusand factual news. The standard set of machine learning algorithms like K-Nearest Neighbors, Support Vector Machine, Naive Bayes and Passive Aggressive Classifier are trained using either the title or the content of the article. There results show that the PAC classifier produces the highest accuracy of 94.63% over the other three classifiers using diagram term frequency.
机译:一个人应该回忆起美国2015年和2016年美国总统选举周期处理的众多丑闻,这些丑闻是由伪造的新闻文章引发的,这些文章通过推特和Facebook这样的社交媒体而爆炸。当发现这些物品被目的地上传了财务和政治利益时,很明显,必须识别和删除虚假新闻,以防止公众因某人的个人收益而被欺骗。本研究建立了一个监督机器语言模型,以检测2015年和2016年美国选举周期发表的假新闻文章。数据集包含相同数量的Bogusand事实新闻。像K到最近邻居,支持向量机,天真贝叶斯和被动攻击性分类的标准机器学习算法都是使用文章的标题或内容培训的。结果表明,PAC分类器使用图术语频率在其他三分类器中产生94.63%的最高精度。

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