你受到影响了吗?:模拟假新闻在社交媒体上的传播

Abishai Joy, Anu Shrestha, Francesca Spezzano
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引用次数: 2

摘要

受创新扩散理论的启发,我们提出了一种方法,通过不同层次的影响因素(用户、网络和新闻)来建模和表征社交媒体中的假新闻分享。我们将预测假新闻共享的问题作为分类任务来解决,并通过实现0.97的AUROC和0.88的平均精度来展示所提出特征的潜力,始终以更高的边际(约30%的AUROC)优于基线模型。此外,我们还表明,基于新闻的特征在预测真假新闻分享方面最有效,其次是基于用户和网络的特征。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Are you influenced?: modeling the diffusion of fake news in social media
We propose an approach inspired by the diffusion of innovations theory to model and characterize fake news sharing in social media through the lens of the different levels of influential factors (users, networks, and news). We address the problem of predicting fake news sharing as a classification task and demonstrate the potentials of the proposed features by achieving an AUROC of 0.97 and an average precision of 0.88, consistently outperforming baseline models with a higher margin (about 30% of AUROC). Also, we show that news-based features are the most effective at predicting real and fake news sharing, followed by the user- and network-based features.
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