Synthetic Misinformers: Generating and Combating Multimodal Misinformation

Stefanos Papadopoulos, C. Koutlis, S. Papadopoulos, P. Petrantonakis
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引用次数: 5

Abstract

With the expansion of social media and the increasing dissemination of multimedia content, the spread of misinformation has become a major concern. This necessitates effective strategies for multimodal misinformation detection (MMD) that detect whether the combination of an image and its accompanying text could mislead or misinform. Due to the data-intensive nature of deep neural networks and the labor-intensive process of manual annotation, researchers have been exploring various methods for automatically generating synthetic multimodal misinformation - which we refer to as Synthetic Misinformers - in order to train MMD models. However, limited evaluation on real-world misinformation and a lack of comparisons with other Synthetic Misinformers makes difficult to assess progress in the field. To address this, we perform a comparative study on existing and new Synthetic Misinformers that involves (1) out-of-context (OOC) image-caption pairs, (2) cross-modal named entity inconsistency (NEI) as well as (3) hybrid approaches and we evaluate them against real-world misinformation; using the COSMOS benchmark. The comparative study showed that our proposed CLIP-based Named Entity Swapping can lead to MMD models that surpass other OOC and NEI Misinformers in terms of multimodal accuracy and that hybrid approaches can lead to even higher detection accuracy. Nevertheless, after alleviating information leakage from the COSMOS evaluation protocol, low Sensitivity scores indicate that the task is significantly more challenging than previous studies suggested. Finally, our findings showed that NEI-based Synthetic Misinformers tend to suffer from a unimodal bias, where text-only models can outperform multimodal ones.
合成错误信息:产生和打击多模态错误信息
随着社交媒体的扩大和多媒体内容的日益传播,错误信息的传播已成为一个主要问题。这就需要有效的多模态错误信息检测(MMD)策略来检测图像及其附带文本的组合是否会误导或误导。由于深度神经网络的数据密集型和人工标注过程的劳动密集型,研究人员一直在探索各种自动生成合成多模态错误信息(我们称之为合成错误信息)的方法,以训练MMD模型。然而,对真实世界错误信息的有限评估和缺乏与其他合成错误信息的比较使得很难评估该领域的进展。为了解决这个问题,我们对现有的和新的合成错误信息进行了比较研究,其中涉及(1)上下文外(OOC)图像标题对,(2)跨模态命名实体不一致(NEI)以及(3)混合方法,我们针对现实世界的错误信息对它们进行了评估;使用COSMOS基准测试。比较研究表明,我们提出的基于clip的命名实体交换可以导致MMD模型在多模态精度方面超过其他OOC和NEI错误信息者,混合方法可以导致更高的检测精度。然而,在减轻COSMOS评估协议的信息泄漏后,较低的敏感性分数表明任务比以前的研究表明的更具挑战性。最后,我们的研究结果表明,基于nei的合成误报者往往存在单模态偏差,其中纯文本模型的表现优于多模态模型。
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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