In this paper, we introduce UnifiedM2, a general-purpose misinformation model that jointly models multiple domains of misinformation with a single, unified setup. The model is trained to handle four tasks: detecting news bias, clickbait, fake news, and verifying rumors. By grouping these tasks together, UnifiedM2learns a richer representation of misinformation, which leads to state-of-the-art or comparable performance across all tasks. Furthermore, we demonstrate that UnifiedM2's learned representation is helpful for few-shot learning of unseen misinformation tasks/datasets and model's generalizability to unseen events.
翻译:在本文中,我们引入了一个通用错误信息模型UniversalM2, 即通用错误信息模型,它用一个单一的统一设置来共同模拟多个错误信息领域。该模型经过培训,可以执行四项任务:发现新闻偏差、点击键盘、假新闻和核实谣言。通过将这些任务组合在一起,UnidM2lears将错误信息描述得更加丰富,从而导致在所有任务中取得最新或可比的业绩。此外,我们证明UnidM2的学术表现有助于对未知错误任务/数据集和模型对未知事件的可理解性进行微小的学习。