Amani Alzahrani, Tahani Baabdullah, Aeman Almotairi, D. Rawat
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引用次数: 0
摘要
社交媒体已经成为世界各地用户获取新闻和信息的热门来源。然而,信息向各地用户快速传播的力量也使包括Twitter在内的社交媒体平台容易传播谣言或虚假信息等错误信息。在社交媒体上对这类新闻进行自动分类是一项具有挑战性的任务。在本研究中,我们提出了一种混合深度学习模型,该模型利用了从推文和用户两个层面提取的基于特征的模型(FB),并结合了预训练的文本嵌入模型,如Global Vectors for word representation (GloVe)和Universal Sentence Encoders (USE)。这些模型在包含Twitter谣言和非谣言集合的真实数据集上进行了评估。实验评估结果表明,我们的混合深度学习模型在谣言检测方面比基线学习器和之前的方法取得了更高的准确率。此外,结合基于特征的模型和文本嵌入模型的混合模型与使用单一模型相比,可以提高性能。
A Hybrid Deep Learning Architecture for Misinformation Detection on Social Media
Social media has grown to become a popular source of news and information for users around the world. However, the strength of fast dissemination of information to users in diverse places also exposes social media platforms, including Twitter, to the spread of misinformation, such as rumors or false information. Automated classification of such news on social media is a challenging task. In this study, we propose a hybrid deep learning model that utilizes a Features-Based model (FB) extracted from two levels: tweet level and user level, combined with pre-trained text embedding models such as Global Vectors for word representation (GloVe) and Universal Sentence Encoders (USE). The models were evaluated on a real-world dataset containing a collection of Twitter rumors and non-rumors. The experimental evaluation results reveal that our hybrid deep-learning model achieves higher accuracy in detecting rumors compared to the baseline learners and previous methods. Further, a hybrid model that combined a features-based model and text embedding model led to improve performance compared to use a single model.