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Fake News Detection with Integration of Embedded Text Cues and Image Features

机译:集成嵌入式文本提示和图像功能的假新闻检测

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A novel approach using Convolution neural Network (CNN) and Long short-term memory (LSTM) has been proposed to find the reliability of the news. In this research, image visual feature with embedded text feature and headline texts have been considered to find the comprehensive results. First the semantic information from the images have been captured as text (news tag line) and this tag has been compared to the original headline text. Individually image and text both are insufficient to find the semantic knowledge of publish news. So, the cosine similarity index (CSI) has been used to predict the reliability of the news. The threshold of CSI has been constrained greater than 0.62 for the news real. A repository has been created named as” imaged fake news”. In this repository 1000 images have been considered with the headline texts, where 367 news were fake and 633 news were real. The accuracy of the proposed method is 91.07%. The result implies that the novel methodology is better than the state-of-the-art method.
机译:提出了一种使用卷积神经网络(CNN)和长短期记忆(LSTM)的新颖方法来查找新闻的可靠性。在这项研究中,考虑了具有嵌入文本特征和标题文本的图像视觉特征,以找到综合结果。首先,已将图像中的语义信息捕获为文本(新闻标签行),并将此标签与原始标题文本进行了比较。图像和文本都不足以找到发布新闻的语义知识。因此,余弦相似度指数(CSI)已用于预测新闻的可靠性。对于真实新闻,CSI的阈值被限制为大于0.62。已经创建了一个名为“假冒新闻图像”的存储库。在此资料库中,标题文字已考虑了1000张图像,其中367条新闻是假的,而633条新闻是真实的。所提方法的准确性为91.07%。结果表明,该新方法优于最新方法。

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