Probing Spurious Correlations in Popular Event-Based Rumor Detection Benchmarks

Jiaying Wu, Bryan Hooi
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引用次数: 2

Abstract

As social media becomes a hotbed for the spread of misinformation, the crucial task of rumor detection has witnessed promising advances fostered by open-source benchmark datasets. Despite being widely used, we find that these datasets suffer from spurious correlations, which are ignored by existing studies and lead to severe overestimation of existing rumor detection performance. The spurious correlations stem from three causes: (1) event-based data collection and labeling schemes assign the same veracity label to multiple highly similar posts from the same underlying event; (2) merging multiple data sources spuriously relates source identities to veracity labels; and (3) labeling bias. In this paper, we closely investigate three of the most popular rumor detection benchmark datasets (i.e., Twitter15, Twitter16 and PHEME), and propose event-separated rumor detection as a solution to eliminate spurious cues. Under the event-separated setting, we observe that the accuracy of existing state-of-the-art models drops significantly by over 40%, becoming only comparable to a simple neural classifier. To better address this task, we propose Publisher Style Aggregation (PSA), a generalizable approach that aggregates publisher posting records to learn writing style and veracity stance. Extensive experiments demonstrate that our method outperforms existing baselines in terms of effectiveness, efficiency and generalizability.
在流行的基于事件的谣言检测基准中探测虚假相关性
随着社交媒体成为传播错误信息的温床,在开源基准数据集的推动下,至关重要的谣言检测任务取得了可喜的进展。尽管被广泛使用,但我们发现这些数据集存在虚假相关性,这些相关性被现有研究忽略,导致对现有谣言检测性能的严重高估。虚假相关性源于三个原因:(1)基于事件的数据收集和标记方案将相同的真实性标签分配给来自同一潜在事件的多个高度相似的帖子;(2)合并多个数据源将源身份与真实性标签虚假关联;(3)标签偏差。在本文中,我们仔细研究了三种最流行的谣言检测基准数据集(即Twitter15, Twitter16和PHEME),并提出了事件分离的谣言检测作为消除虚假线索的解决方案。在事件分离设置下,我们观察到现有最先进模型的准确性显著下降超过40%,仅与简单的神经分类器相当。为了更好地解决这个问题,我们提出了发布者风格聚合(PSA),这是一种聚合发布者发布记录以学习写作风格和准确性立场的通用方法。大量的实验表明,我们的方法在有效性、效率和通用性方面优于现有的基线。
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