TAI: a lightweight network for content-based fake news detection

Na Ye, Dingguo Yu, Xiaoyu Ma, Yijie Zhou, Yanqin Yan
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Abstract

PurposeFake news in cyberspace has greatly interfered with national governance, economic development and cultural communication, which has greatly increased the demand for fake news detection and intervention. At present, the recognition methods based on news content all lose part of the information to varying degrees. This paper proposes a lightweight content-based detection method to achieve early identification of false information with low computation costs.Design/methodology/approachThe authors' research proposes a lightweight fake news detection framework for English text, including a new textual feature extraction method, specifically mapping English text and symbols to 0–255 using American Standard Code for Information Interchange (ASCII) codes, treating the completed sequence of numbers as the values of picture pixel points and using a computer vision model to detect them. The authors also compare the authors' framework with traditional word2vec, Glove, bidirectional encoder representations from transformers (BERT) and other methods.FindingsThe authors conduct experiments on the lightweight neural networks Ghostnet and Shufflenet, and the experimental results show that the authors' proposed framework outperforms the baseline in accuracy on both lightweight networks.Originality/valueThe authors' method does not rely on additional information from text data and can efficiently perform the fake news detection task with less computational resource consumption. In addition, the feature extraction method of this framework is relatively new and enlightening for text content-based classification detection, which can detect fake news in time at the early stage of fake news propagation.
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TAI:基于内容的假新闻检测轻量级网络
目的网络空间的假新闻极大地干扰了国家治理、经济发展和文化传播,对假新闻检测和干预的需求大大增加。目前,基于新闻内容的识别方法都不同程度地丢失了部分信息。本文提出了一种基于内容的轻量级检测方法,以较低的计算成本实现对虚假信息的早期识别。设计/方法/途径作者的研究提出了一种针对英文文本的轻量级假新闻检测框架,包括一种新的文本特征提取方法,具体是利用美国信息交换标准码(ASCII)将英文文本和符号映射为 0-255,将完成的数字序列视为图片像素点的值,并利用计算机视觉模型进行检测。研究结果作者在轻量级神经网络 Ghostnet 和 Shufflenet 上进行了实验,实验结果表明,作者提出的框架在这两个轻量级网络上的准确率都优于基线。原创性/价值作者的方法不依赖文本数据中的额外信息,能以较少的计算资源消耗高效地完成假新闻检测任务。此外,该框架的特征提取方法比较新颖,对基于文本内容的分类检测具有启发意义,可以在假新闻传播的早期阶段及时发现假新闻。
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