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Phony News Detection using Machine Learning and Deep-Learning Techniques

机译:使用机器学习和深度学习技术检测Phony新闻检测

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The proliferation of misleading news stories on social-media raised a big challenge due to its potential to create an adverse impact on human-being. Existing lexico-syntactic features are unable to detect counterfeit news. Most of the state of art algorithms used small datasets containing a limited number of the training dataset. In this paper, we evaluate our framework on the LIAR dataset by applying machine learning and advanced deep learning techniques. LIAR is a predominant dataset consist of 12,836 short news collected from different sources, including social media. The proposed framework uses POS (part of speech) tagging information and Glove Embedding. The result shows the superiority in terms of accuracy in comparison to the existing state of the art algorithm.
机译:由于潜力为人类产生不利影响,社会媒体的误导性新闻报道的扩散提出了一个重要挑战。现有的词典语法特征无法检测到假冒新闻。大多数现有技术算法使用了包含有限数量的训练数据集的小型数据集。在本文中,我们通过应用机器学习和高级深度学习技术评估我们在骗子数据集的框架。骗子是一个主要的数据集,由不同来源收集的12,836个短期内,包括社交媒体。所提出的框架使用POS(词性的一部分)标记信息和手套嵌入。结果显示了与现有技术算法的现有状态相比的精度方面的优越性。

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