通过迁移和集合学习使用多模式检测印地语中的假新闻

Sonal Garg, Dilip Kumar Sharma
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引用次数: 0

摘要

对于机器学习和人工智能研究人员来说,假新闻分类是一个令人兴奋的话题。关于假新闻检测的现有文献大多基于英语语言。因此,它需要更多的可用性。由于缺乏大型注释数据集和工具,低资源恐慌语言中的假新闻检测仍具有挑战性。在这项工作中,我们提出了一个印地语的大规模印度新闻数据集。该数据集是通过搜索不同的可靠事实核查网站构建的。我们采用 LDA 方法为新闻声明分配类别。应用各种机器学习和迁移学习方法来验证数据集的真实性。基于机器学习分类器的低假阳性率,还应用了集合学习。通过将 LSTM 与 VGG-16 和 VGG-19 分类器相结合,采用了一种多模式方法。LSTM 用于文本特征,而 VGG-16 和 VGG-19 则用于图像分析。我们提出的数据集取得了令人满意的效果。
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Fake news detection in the Hindi language using multi‐modality via transfer and ensemble learning
Fake news classification emerged as an exciting topic for machine learning and artificial intelligence researchers. Most of the existing literature on fake news detection is based on the English language. Hence, it needs more usability. Fake news detection in low‐resource scare languages is still challenging due to the absence of large annotated datasets and tools. In this work, we propose a large‐scale Indian news dataset for the Hindi language. This dataset is constructed by scraping different reliable fact‐checking websites. The LDA approach is adopted to assign the category to news statements. Various machine‐learning and transfer learning approaches are applied to verify the authenticity of the dataset. Ensemble learning is also applied based on the low false‐positive rate of machine‐learning classifiers. A multi‐modal approach is adopted by combining LSTM with VGG‐16 and VGG‐19 classifiers. LSTM is used for textual features, while VGG‐16 and VGG‐19 are applied for image analysis. Our proposed dataset has achieved satisfactory performance.
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