AutoKeras for Fake News Identification in Arabic: Leveraging Deep Learning with an Extensive Dataset

Raed S. Matti, Suhad A. Yousif
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Abstract

Social media and the World Wide Web have led to a worrying rise in spreading false information, which presents a significant worldwide issue. Identifying and preventing false information is crucial in promoting an informed and knowledgeable society. The identification of false information, specifically in the Arabic dialect, presents inherent difficulties due to its diverse characteristics and linguistic intricacies. This study implements AutoKeras, a deep learning-based machine learning framework. Using advanced optimization techniques, the neural network architecture search, hyperparameter adjustments, and model selection can all be automated in AutoKeras. Therefore, it is suitable for our fake news detection task. The methodology employs proficient deep learning algorithms and natural language processing methods to acquire distinct characteristics that enable accurate differentiation between genuine and fake news. The present study uses various sources, including news websites, social media platforms, and blogs, to construct the dataset. The AutoKeras-based approach is superior to multiple state-of-the-art approaches to detecting fabricated news in Arabic, as evidenced by the experimental results. The suggested method outperforms 93.2% accuracy in identifying fake news, demonstrating its superior efficacy. This demonstrates the great promise of the deep learning-based Auto model for detecting false information.
阿拉伯语假新闻识别的AutoKeras:利用深度学习和广泛的数据集
社交媒体和万维网导致虚假信息的传播令人担忧,这是一个重大的全球性问题。识别和防止虚假信息对于促进一个知情和知识渊博的社会至关重要。识别虚假信息,特别是在阿拉伯语方言中,由于其多样化的特征和语言的复杂性,提出了固有的困难。本研究实现了AutoKeras,一个基于深度学习的机器学习框架。使用先进的优化技术,神经网络架构搜索,超参数调整和模型选择都可以在AutoKeras中自动化。因此,它很适合我们的假新闻检测任务。该方法采用熟练的深度学习算法和自然语言处理方法来获取独特的特征,从而能够准确区分真假新闻。本研究使用各种来源,包括新闻网站、社交媒体平台和博客,来构建数据集。实验结果证明,基于autokeras的方法优于多种最先进的方法来检测阿拉伯语中的虚假新闻。该方法识别假新闻的准确率超过93.2%,显示了其优越的有效性。这证明了基于深度学习的Auto模型在检测虚假信息方面的巨大潜力。
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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