A Deep Learning Approach to Fake News Classification Using LSTM

Andrianarisoa, Sitraka Herinambinina and Ravelonjara, Henri Michaël and Suddul, Geerish and Foogooa, Ravi and Armoogum, Sandhya and Sookarah, Doorgesh (2025) A Deep Learning Approach to Fake News Classification Using LSTM. Vokasi Unesa Bulletin of Engineering, Technology and Applied Science, 2 (3). pp. 593-601.

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Abstract

The rapid spread of misinformation on digital platforms poses a major challenge today. The ability to detect false information is essential to mitigate the associated harmful consequences. This research presents a deep learning approach for detecting fake news using Long Short-Term Memory (LSTM) model, which captures linguistic patterns and long-term dependencies in text. Our approach consists of optimizing the model through different experiments based on hyperparameter tuning, on a pre-processed dataset. The evaluation is performed using different metrics such as accuracy, precision, recall, and F1-score. Experimental results show that the LSTM model achieves high accuracy of 0.9974, with embedding dimension of 128 using 100 LSTM units, batch size of 64 and drop-out rate of 0.48. It is a substantial improvement over previous studies. The application of cross-validation further confirms the model’s reliability. This research demonstrates that the application of a fine-tuned LSTM network with robust data preprocessing can provide a powerful tool to combat online misinformation.

Item Type: Article
Subjects: Q Science > QA Mathematics > QA75 Electronic computers. Computer science
Depositing User: Dewi Puspitasari
Date Deposited: 21 Apr 2026 11:11
Last Modified: 21 Apr 2026 11:16
URI: https://alxiv.org/id/eprint/49

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