Detect Rumors on Twitter by Promoting Information Campaigns with Generative Adversarial Learning

Jing Ma, Wei Gao, Kam-Fai Wong
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引用次数: 174

Abstract

Rumors can cause devastating consequences to individual and/or society. Analysis shows that widespread of rumors typically results from deliberately promoted information campaigns which aim to shape collective opinions on the concerned news events. In this paper, we attempt to fight such chaos with itself to make automatic rumor detection more robust and effective. Our idea is inspired by adversarial learning method originated from Generative Adversarial Networks (GAN). We propose a GAN-style approach, where a generator is designed to produce uncertain or conflicting voices, complicating the original conversational threads in order to pressurize the discriminator to learn stronger rumor indicative representations from the augmented, more challenging examples. Different from traditional data-driven approach to rumor detection, our method can capture low-frequency but stronger non-trivial patterns via such adversarial training. Extensive experiments on two Twitter benchmark datasets demonstrate that our rumor detection method achieves much better results than state-of-the-art methods.
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通过生成对抗学习促进信息运动来检测Twitter上的谣言
谣言会对个人和/或社会造成毁灭性的后果。分析表明,谣言的广泛传播通常是故意宣传的信息活动的结果,这些活动旨在塑造人们对有关新闻事件的集体看法。在本文中,我们试图与这种混乱作斗争,使自动谣言检测更加鲁棒和有效。我们的想法受到源自生成对抗网络(GAN)的对抗学习方法的启发。我们提出了一种gan风格的方法,其中生成器被设计用于产生不确定或冲突的声音,使原始会话线程复杂化,以迫使鉴别器从增强的、更具挑战性的示例中学习更强的谣言指示表示。与传统的数据驱动的谣言检测方法不同,我们的方法可以通过这种对抗性训练捕获低频但更强的非平凡模式。在两个Twitter基准数据集上的大量实验表明,我们的谣言检测方法比最先进的方法取得了更好的结果。
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