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Deep neural approach to Fake-News identification

机译:虚假新闻识别的深神经方法

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The complexities of fake news detection cannot be overcome solely with Natural Language Processing. Even a human being finds it difficult to decide the authenticity of an article without further fact checking. Hence a Deep Learning model entirely based on NLP is bound to have huge limitations. In order to address this shortcoming, the proposed system additionally includes a live data stage mining which provides secondary features. These features include source domains of the article, author names etc.. Since these features mimic the process of fact-checking to an extent, the model is expected to outperform existing models that are solely based on NLP. We seek to compare the results from models with and without secondary mined features. LSTM and FF Neural Networks are explored. Additionally, effectiveness of different word vector representations in relation to this problem are also investigated.
机译:假新闻检测的复杂性不能完全克服自然语言处理。即使是人类发现难以确定一篇文章的真实性,而无需进一步检查。因此,基于NLP的深度学习模型必然会有巨大的限制。为了解决这种缺点,所提出的系统还包括实时数据级挖掘,该挖掘提供辅助特征。这些功能包括文章的源域,作者姓名等。由于这些功能模拟了事实检查的过程,因此预计该模型将优于仅基于NLP的现有模型。我们寻求将模型的结果与次要开采功能进行比较。探索了LSTM和FF神经网络。另外,还研究了与该问题有关的不同词矢量表示的有效性。

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