Security issues of news data dissemination in internet environment

Kang Song, Wenqian Shang, Yong Zhang, Tong Yi, Xuan Wang
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Abstract

With the rise of artificial intelligence and the development of social media, people's communication is more convenient and convenient. However, in the Internet environment, the untrue dissemination of news data leads to a large number of problems. Efficient and automatic detection of rumors in social platforms hence has become an important research direction in recent years. This paper leverages deep learning methods to mine the changing trend of user features related to rumor events, and designs a rumor detection model called Time Based User Feature Capture Model(TBUFCM). To obtain a new feature vector representing the user's comprehensive features under the current event, the proposed model first recomputes the user feature vector by using feature enhancement function. Then it utilizes GRU(Gate Recurrent Unit, GRU) and CNN(Convolutional Neural Networks, CNN) models to learn the global and local changes of user features, respectively. Finally, the hidden rumor features in the process of rumor propagation can be discovered by user and time information. The experimental results show that TBUFCM outperforms the baseline model, and when there are only 20 forwarded posts, it can also reach an accuracy of 92%. The proposed method can effectively solve the security problem of news data dissemination in the Internet environment.
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互联网环境下新闻数据传播的安全问题
随着人工智能的兴起和社交媒体的发展,人们的沟通交流更加便捷。然而,在互联网环境下,新闻数据的不真实传播导致了大量问题。因此,高效、自动地检测社交平台中的谣言成为近年来的一个重要研究方向。本文利用深度学习方法挖掘与谣言事件相关的用户特征变化趋势,设计了一种谣言检测模型--基于时间的用户特征捕捉模型(TBUFCM)。为了获得代表当前事件下用户综合特征的新特征向量,所提出的模型首先利用特征增强函数重新计算用户特征向量。然后,它利用 GRU(门递归单元,GRU)和 CNN(卷积神经网络,CNN)模型分别学习用户特征的全局和局部变化。最后,通过用户和时间信息发现谣言传播过程中隐藏的谣言特征。实验结果表明,TBUFCM 优于基线模型,当转发帖子只有 20 个时,其准确率也能达到 92%。所提出的方法能有效解决互联网环境下新闻数据传播的安全问题。
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