An Environmental Uncertainty Perception Framework for Misinformation Detection and Spread Prediction in the COVID-19 Pandemic: Artificial Intelligence Approach

JMIR AI Pub Date : 2024-01-29 DOI:10.2196/47240
Jiahui Lu, Huibin Zhang, Yi Xiao, Yingyu Wang
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Abstract

Amidst the COVID-19 pandemic, misinformation on social media has posed significant threats to public health. Detecting and predicting the spread of misinformation are crucial for mitigating its adverse effects. However, prevailing frameworks for these tasks have predominantly focused on post-level signals of misinformation, neglecting features of the broader information environment where misinformation originates and proliferates. This study aims to create a novel framework that integrates the uncertainty of the information environment into misinformation features, with the goal of enhancing the model’s accuracy in tasks such as misinformation detection and predicting the scale of dissemination. The objective is to provide better support for online governance efforts during health crises. In this study, we embraced uncertainty features within the information environment and introduced a novel Environmental Uncertainty Perception (EUP) framework for the detection of misinformation and the prediction of its spread on social media. The framework encompasses uncertainty at 4 scales of the information environment: physical environment, macro-media environment, micro-communicative environment, and message framing. We assessed the effectiveness of the EUP using real-world COVID-19 misinformation data sets. The experimental results demonstrated that the EUP alone achieved notably good performance, with detection accuracy at 0.753 and prediction accuracy at 0.71. These results were comparable to state-of-the-art baseline models such as bidirectional long short-term memory (BiLSTM; detection accuracy 0.733 and prediction accuracy 0.707) and bidirectional encoder representations from transformers (BERT; detection accuracy 0.755 and prediction accuracy 0.728). Additionally, when the baseline models collaborated with the EUP, they exhibited improved accuracy by an average of 1.98% for the misinformation detection and 2.4% for spread-prediction tasks. On unbalanced data sets, the EUP yielded relative improvements of 21.5% and 5.7% in macro-F1-score and area under the curve, respectively. This study makes a significant contribution to the literature by recognizing uncertainty features within information environments as a crucial factor for improving misinformation detection and spread-prediction algorithms during the pandemic. The research elaborates on the complexities of uncertain information environments for misinformation across 4 distinct scales, including the physical environment, macro-media environment, micro-communicative environment, and message framing. The findings underscore the effectiveness of incorporating uncertainty into misinformation detection and spread prediction, providing an interdisciplinary and easily implementable framework for the field.
用于 COVID-19 大流行中错误信息检测和传播预测的环境不确定性感知框架:人工智能方法
在 COVID-19 大流行期间,社交媒体上的错误信息对公众健康构成了重大威胁。检测和预测错误信息的传播对于减轻其不利影响至关重要。然而,针对这些任务的现有框架主要关注的是错误信息的后级信号,而忽视了错误信息起源和扩散的更广泛信息环境的特征。 本研究旨在创建一个新颖的框架,将信息环境的不确定性整合到错误信息特征中,目的是提高模型在错误信息检测和预测传播规模等任务中的准确性。其目的是为健康危机期间的在线治理工作提供更好的支持。 在这项研究中,我们考虑了信息环境中的不确定性特征,并引入了一个新颖的环境不确定性感知(EUP)框架,用于检测错误信息并预测其在社交媒体上的传播。该框架包括信息环境中四个尺度的不确定性:物理环境、宏观媒体环境、微观传播环境和信息框架。我们利用真实世界中的 COVID-19 错误信息数据集评估了 EUP 的有效性。 实验结果表明,EUP 本身的性能非常出色,其检测准确率为 0.753,预测准确率为 0.71。这些结果与最先进的基线模型不相上下,如双向长短期记忆(BiLSTM;检测准确率为 0.733,预测准确率为 0.707)和来自变压器的双向编码器表征(BERT;检测准确率为 0.755,预测准确率为 0.728)。此外,当基线模型与 EUP 协作时,它们在错误信息检测和传播预测任务中的准确率平均分别提高了 1.98% 和 2.4%。在非平衡数据集上,EUP 在宏观 F1 分数和曲线下面积方面分别取得了 21.5% 和 5.7% 的相对改进。 这项研究认识到信息环境中的不确定性特征是改进大流行病期间错误信息检测和传播预测算法的关键因素,从而为文献做出了重要贡献。研究阐述了错误信息的不确定信息环境的复杂性,包括物理环境、宏观媒体环境、微观交流环境和信息框架等 4 个不同尺度。研究结果强调了将不确定性纳入错误信息检测和传播预测的有效性,为该领域提供了一个跨学科且易于实施的框架。
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