MetaDetector: Meta Event Knowledge Transfer for Fake News Detection

Yasan Ding, Bin Guo, Y. Liu, Yunji Liang, Haocheng Shen, Zhiwen Yu
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引用次数: 5

Abstract

The blooming of fake news on social networks has devastating impacts on society, the economy, and public security. Although numerous studies are conducted for the automatic detection of fake news, the majority tend to utilize deep neural networks to learn event-specific features for superior detection performance on specific datasets. However, the trained models heavily rely on the training datasets and are infeasible to apply to upcoming events due to the discrepancy between event distributions. Inspired by domain adaptation theories, we propose an end-to-end adversarial adaptation network, dubbed as MetaDetector, to transfer meta knowledge (event-shared features) between different events. Specifically, MetaDetector pushes the feature extractor and event discriminator to eliminate event-specific features and preserve required meta knowledge by adversarial training. Furthermore, the pseudo-event discriminator is utilized to evaluate the importance of news records in historical events to obtain partial knowledge that are discriminative for detecting fake news. Under the coordinated optimization among all the submodules, MetaDetector accurately transfers the meta knowledge of historical events to the upcoming event for fact checking. We conduct extensive experiments on two real-world datasets collected from Sina Weibo and Twitter. The experimental results demonstrate that MetaDetector outperforms the state-of-the-art methods, especially when the distribution discrepancy between events is significant.
Meta检测器:用于假新闻检测的Meta事件知识转移
虚假新闻在社交网络上的泛滥对社会、经济和公共安全造成了毁灭性的影响。尽管针对假新闻的自动检测进行了大量研究,但大多数研究倾向于利用深度神经网络来学习特定事件的特征,以便在特定数据集上获得更好的检测性能。然而,训练后的模型严重依赖于训练数据集,由于事件分布之间的差异,无法应用于即将发生的事件。在领域适应理论的启发下,我们提出了一个端到端的对抗性适应网络,称为元探测器,用于在不同事件之间传递元知识(事件共享特征)。具体来说,MetaDetector推动特征提取器和事件鉴别器来消除特定于事件的特征,并通过对抗性训练保留所需的元知识。进一步,利用伪事件判别器评估历史事件中新闻记录的重要性,获得对假新闻检测具有判别性的部分知识。在各子模块的协同优化下,meta - detector准确地将历史事件的元知识传递给即将发生的事件进行事实核查。我们对从新浪微博和Twitter收集的两个真实数据集进行了广泛的实验。实验结果表明,MetaDetector算法在事件间分布差异较大的情况下优于现有的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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