论文标题

QSAN:基于量子概率的签名注意网络,用于可解释的虚假信息检测

QSAN: A Quantum-probability based Signed Attention Network for Explainable False Information Detection

论文作者

Tian, Tian, Liu, Yudong, Yang, Xiaoyu, Lyu, Yuefei, Zhang, Xi, Fang, Binxing

论文摘要

社交媒体上的虚假信息检测具有挑战性,因为它通常需要乏味的证据,但缺乏可用的比较信息。从用户评论中挖掘出来的线索,因为人群的智慧,这项任务可能会有很大的好处。但是,考虑到它们的隐式相关性,从内容和评论中捕获复杂语义是非平凡的。尽管深度神经网络具有良好的表达能力,但一个主要的缺点是缺乏解释性。在本文中,我们专注于如何从社交媒体中的帖子内容和相关评论中学习,以更有效地理解和检测虚假信息,并具有解释性。因此,我们提出了一个基于量子验证的签名注意网络(QSAN),该网络(QSAN)集成了量子驱动的文本编码和在统一框架中的新颖签名的注意机制。 QSAN不仅能够将重要评论与其他评论区分开,而且可以利用评论中相互矛盾的社会观点以促进检测。此外,Qsan在量子物理学含义和注意力重量的透明度方面具有解释性是有利的。对现实世界数据集的广泛实验表明,我们的方法的表现要优于最先进的基线,并且可以提供不同种类的用户评论,以解释为什么将一块信息检测为false。

False information detection on social media is challenging as it commonly requires tedious evidence-collecting but lacks available comparative information. Clues mined from user comments, as the wisdom of crowds, could be of considerable benefit to this task. However, it is non-trivial to capture the complex semantics from the contents and comments in consideration of their implicit correlations. Although deep neural networks have good expressive power, one major drawback is the lack of explainability. In this paper, we focus on how to learn from the post contents and related comments in social media to understand and detect the false information more effectively, with explainability. We thus propose a Quantum-probability based Signed Attention Network (QSAN) that integrates the quantum-driven text encoding and a novel signed attention mechanism in a unified framework. QSAN is not only able to distinguish important comments from the others, but also can exploit the conflicting social viewpoints in the comments to facilitate the detection. Moreover, QSAN is advantageous with its explainability in terms of transparency due to quantum physics meanings and the attention weights. Extensive experiments on real-world datasets show that our approach outperforms state-of-the-art baselines and can provide different kinds of user comments to explain why a piece of information is detected as false.

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