A novel approach to fake news classification using LSTM-based deep learning models

IF 2.4 Q3 COMPUTER SCIENCE, INFORMATION SYSTEMS
Halyna Padalko, Vasyl Chomko, D. Chumachenko
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引用次数: 0

Abstract

The rapid dissemination of information has been accompanied by the proliferation of fake news, posing significant challenges in discerning authentic news from fabricated narratives. This study addresses the urgent need for effective fake news detection mechanisms. The spread of fake news on digital platforms has necessitated the development of sophisticated tools for accurate detection and classification. Deep learning models, particularly Bi-LSTM and attention-based Bi-LSTM architectures, have shown promise in tackling this issue. This research utilized Bi-LSTM and attention-based Bi-LSTM models, integrating an attention mechanism to assess the significance of different parts of the input data. The models were trained on an 80% subset of the data and tested on the remaining 20%, employing comprehensive evaluation metrics including Recall, Precision, F1-Score, Accuracy, and Loss. Comparative analysis with existing models revealed the superior efficacy of the proposed architectures. The attention-based Bi-LSTM model demonstrated remarkable proficiency, outperforming other models in terms of accuracy (97.66%) and other key metrics. The study highlighted the potential of integrating advanced deep learning techniques in fake news detection. The proposed models set new standards in the field, offering effective tools for combating misinformation. Limitations such as data dependency, potential for overfitting, and language and context specificity were acknowledged. The research underscores the importance of leveraging cutting-edge deep learning methodologies, particularly attention mechanisms, in fake news identification. The innovative models presented pave the way for more robust solutions to counter misinformation, thereby preserving the veracity of digital information. Future research should focus on enhancing data diversity, model efficiency, and applicability across various languages and contexts.
利用基于 LSTM 的深度学习模型进行假新闻分类的新方法
信息的快速传播伴随着假新闻的泛滥,给辨别真假新闻带来了巨大挑战。本研究探讨了对有效假新闻检测机制的迫切需求。假新闻在数字平台上的传播要求开发复杂的工具来进行准确的检测和分类。深度学习模型,尤其是 Bi-LSTM 和基于注意力的 Bi-LSTM 架构,在解决这一问题方面已显示出前景。本研究利用 Bi-LSTM 和基于注意力的 Bi-LSTM 模型,整合了注意力机制,以评估输入数据不同部分的重要性。这些模型在 80% 的数据子集上进行了训练,并在其余 20% 的数据上进行了测试,采用的综合评估指标包括 Recall、Precision、F1-Score、Accuracy 和 Loss。与现有模型的对比分析表明,所提出的架构具有卓越的功效。基于注意力的 Bi-LSTM 模型表现出了卓越的能力,在准确率(97.66%)和其他关键指标方面都优于其他模型。这项研究凸显了将先进的深度学习技术整合到假新闻检测中的潜力。所提出的模型为该领域设定了新标准,为打击虚假信息提供了有效工具。数据依赖性、过拟合的可能性以及语言和语境的特殊性等局限性也得到了认可。这项研究强调了在假新闻识别中利用尖端深度学习方法,特别是注意力机制的重要性。所提出的创新模型为更强大的反虚假信息解决方案铺平了道路,从而维护了数字信息的真实性。未来的研究应侧重于提高数据的多样性、模型的效率以及在各种语言和语境中的适用性。
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来源期刊
CiteScore
5.20
自引率
3.20%
发文量
122
审稿时长
13 weeks
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